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Scimeetr is an R package, and a shiny app that helps researchers introduce themselves into their scholarly literature. It contains a suit of function that let someone: load bibliometric data into R, make a map of peer reviewed papers by creating various networks, find research community, characterize the research communities, and generate readin…

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MaximeRivest/scimeetr

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Install

scimeetr can be installed directly from the R console using the following lines :

if (!require("devtools")) install.packages("devtools")

devtools::install_github("MaximeRivest/scimeetr")

Introduction

Scimeetr helps explore the scholarly literature. It contains a suit of function that let someone:

  • load bibliometric data into R
  • make a map of peer reviewed papers by creating various networks
  • find research community
  • characterise the research communities
  • generate reading list

This tutorial is composed of two self-contained section. The first section show case the whole process with all the default parameters. The second section describes each function in more detail by presenting the rational for the function, the algorithms used and the options.

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From data to reading list

You can automatically generate a reading list of seminal papers in a research litterature by using only those three functions:ìmport_wos_files,scimap, andscilist. This first section describes this process in more details.

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loading and exploring bibliometric data

The first step in exploring the literature is to retrieve bibliometric data from theWeb of Science orScopus. In this first tutorial I use a dataset from theWeb of Science about ecological networks.

library(scimeetr)scimeetr_list<- import_wos_files("path/to/folder/")

Then,summary can be used to get a quick characterisation of the data.

summary(scimeetr_list)
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##        comID                      tag## 1 com1 (742)                         ## 2                        BIODIVERSITY## 3                        CONSERVATION## 4                          MANAGEMENT## 5                         AGRICULTURE## 6            AGRI-ENVIRONMENT SCHEMES## 7                  ECOSYSTEM SERVICES

From this summary, we see that there is 396 papers in my data set which overal cites 16567 different elements. On average, each paper cites 53 elements.

Than we learn that, in this research community, 25% of the papers are cited less than 2 times, 50% are cited less than 9 times and 75% are cited less than ~23 times. There are papers that are cited up to 1333 times. The average citation per paper is ~25. This is much higher than the median (9), thus most paper are cited only a few times and a few papers are profusely cited. When correcting for the age of the paper, we learn that papers are cited 2 times per year on average.

By looking at the most frequent keyword and journals, we learn that this community of research is about biodiversity, agriculture, ecosystem services and policy. Keyword and journal frequency tables efficiently reveal the theme of a scientific community.

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Mapping scientific community

The previous characterisation is great, but it is limited if your dataset contains many different scientific communities. By detecting the scientific communities present within a dataset a map of science can be drawn and each cluster can be characterised on its own. The functionscimap can be used for this task.

scimap_result<- scimap(scimeetr_list)

The function returns all the data that scimeetr_list contained and more. For example communities have been identified and now if the functionsummary is used on scim_result. In addition of the previous information. The descriminant keywords of each communities constituating the main community are listed.

summary(scimap_result)
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##           comID                      tag                   ltag$tag## 1    com1 (742)                                                    ## 2                           BIODIVERSITY                           ## 3                           CONSERVATION                           ## 4                             MANAGEMENT                           ## 5                            AGRICULTURE                           ## 6               AGRI-ENVIRONMENT SCHEMES                           ## 7                     ECOSYSTEM SERVICES                           ## 8  com1_1 (358)                                                    ## 9                                                          ADOPTION## 10                                                    PARTICIPATION## 11                                                      AGRICULTURE## 12                                                          FARMERS## 13                                                           POLICY## 14                                       AGRI-ENVIRONMENTAL SCHEMES## 15  com1_2 (49)                                                    ## 16                                                      ABANDONMENT## 17                                                    CEREAL-STEPPE## 18                                                    MEMBER STATES## 19                                                   MOUNTAIN AREAS## 20                                       COMMON AGRICULTURAL POLICY## 21                                                       CAP REFORM## 22  com1_6 (62)                                                    ## 23                                              BOVINE TUBERCULOSIS## 24                                                             RICE## 25                                                          SCARING## 26                                             SPECIES DISTRIBUTION## 27                                                 INVASIVE SPECIES## 28                                             LANDSCAPE PREFERENCE## 29 com1_3 (265)                                                    ## 30                                                     BIODIVERSITY## 31                                         AGRI-ENVIRONMENT SCHEMES## 32                                                       MANAGEMENT## 33                                          AGRICULTURAL LANDSCAPES## 34                                                        DIVERSITY## 35                                                     CONSERVATION

Except for the last tables, all of the output is identical to thesummary output above. Those last tables now reveals that the papers in our database can be clustered in two communities. One that is about x and the other that is about y.

The functionplot can be used on the output of the function summary for a graphical representation of the sub-communities.

plot(summary(scimap_result,com_size=30))

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Automatically generating a reading list of seminal papers

Now that we have characterise the main community and seen of which community it is constituted, we can decide if it is the community that we wish to join / review. If it is, we use the functionscilist to get reading lists. The defaul readin list will find the seminal papers of each communitiy.

reading_list<- scilist(scimap_result)reading_list$com1
publicationmetriclist_type
KLEIJN D, 2003, J APPL ECOL, 40, 947113core_papers
KLEIJN D, 2006, ECOL LETT, 9, 24373core_papers
KLEIJN D, 2001, NATURE, 413, 72357core_papers
BENTON TG, 2003, TRENDS ECOL EVOL, 18, 18254core_papers
PANNELL DJ, 2006, AUST J EXP AGR, 46, 140750core_papers

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In depth description of each steps

How to get bibliometric data?

Biliometric data can be obtained from eitherScopus or theWeb of Science. Most university library have access to either one and some have access to both.

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Retrieving data from Scopus

Scopus home page.

Select all and export

Export as CSV file and select all fields for exportation

Following the previous steps will get you one or several .csv files. Then, to import this/these file(s) inR, you need to put it/them in anew folder which contains only the files to import intoR

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Retrieving data from Web of Science

Web of Science home page. Make sure that Select a database corresponds to Web of Science Core Collection

Web of Science home page. Make sure that Select a database corresponds to Web of Science Core Collection

Save to Other Files Formats

Save to Other Files Formats

You can download only 500 items at a time. You should select Full Record and Cited References. And select the Tab-delimeted (UTF-8) as file format.

You can download only 500 items at a time. You should select Full Record and Cited References. And select the Tab-delimeted (UTF-8) as file format.

Following the previous steps will get you one or several .txt files. Then, to import this/these file(s) inR, you need to put it/them in anew folder which contains only the files to import intoR

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How to upload bibliometric data into R

The bibliometric data obtained from Scopus or Web of science are either in .csv or .txt format. These are standard file formats and you most likely know them. There are built in function inR that let you import .csv and .txt files. So why does scimeetr provide you withimport_scopus_files andimport_wos_files? There are four reasons. The main one is that bibliometric data contains author names from around the world, which means that all alphabets are used and this leads to problems with file encoding. Scimeetr's import functions solves that problem. Second, Scopus do not provide standard, uniform and consisten cited reference list. Thus,import_scopus_files has to standardize it at import. This explains the additional time required to load scopus files versus wos files. Third, Scopus and Web of Science do not use the same column names so they have to be homogenized at import. Finally, the data can be transformed into a scimeetr object so thatsummary,plot andprint will know what to do with it.

scimeetr_list<- import_wos_files(files_directory="/path/to/folder/")scimeetr_list<- import_scopus_files(files_directory="/path/to/folder/")

Do not forget that this function take in a path to a folder not a file. Thus, it need a slash at the end of the folder path.

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Exploring scimeetr data

Printing and summary

Printingscimeetr_list that we just created will provide some informations about it, butsummary will provide more.

scimeetr_list
## ## # A scimeetr object ### ---------------------## Number of papers:  742## Number of communities:  1## Names of communities:  com1## ## Table of the 5 most mentionned words ## ##                  key_words  title_words abstract_words## 1             BIODIVERSITY CONSERVATION        FARMERS## 2             CONSERVATION AGRICULTURAL   CONSERVATION## 3               MANAGEMENT   MANAGEMENT   AGRICULTURAL## 4              AGRICULTURE       POLICY     MANAGEMENT## 5 AGRI-ENVIRONMENT SCHEMES      FARMERS         POLICY
summary(scimeetr_list)
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##        comID                      tag## 1 com1 (742)                         ## 2                        BIODIVERSITY## 3                        CONSERVATION## 4                          MANAGEMENT## 5                         AGRICULTURE## 6            AGRI-ENVIRONMENT SCHEMES## 7                  ECOSYSTEM SERVICES

Characterizing the corpus of papers contained by a scimeetr object

Within the scimeetr package there are several function that help us characterize our corpus of papers.

The corpus of papers can be characterized be:

  • keywords withcharacterize_kw()
  • title-words withcharacterize_ti()
  • astract-words withcharacterize_ab()
  • journals withcharacterize_jo()
  • authors withcharacterize_au()
  • universities withcharacterize_un()
  • countries withcharacterize_co()

Characterize the corpus with keywords

To get even more information about the corpus of papers contained withinscimeetr_list we can usecharacterize_kw. This function will generate a list of data frames, one data frame per communities withinscimeetr_list. The first column of any of these data frames will contain the keywords themselves. The second column contains the frequency of the keywords (i.e. the number of papers that mentions this keyword).

kw<- characterize_kw(scimeetr_list)head(kw$com1)
keywordid_and_de_frequencyde_frequencyid_frequency
BIODIVERSITY18257125
AGRICULTURE1124666
COMMON AGRICULTURAL POLICY40328
ECOSYSTEM SERVICES763145
CONSERVATION15528127
AGRI-ENVIRONMENT SCHEMES1032776

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Characterize the corpus with journals

We can also usecharacterize_jo. Just likecharacterize_kw, this function will generate a list of data frames, one data frame per communities withinscimeetr_list. The first column of any of these data frames will contain the journals' names themselves. The other columns contains several journal based metrics.

jo<- characterize_jo(scimeetr_list)head(jo$com1)
journalcitationsHimpact_factorpapers_citedpapers_within_com
J APPL ECOL841135.46103915421
LAND USE POLICY533124.80180211184
AGR ECOSYST ENVIRON574103.61006315937
J ENVIRON MANAGE445105.4938278133
J RURAL STUD522105.3814439717
SCIENCE21894.73913046NA

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Characterize the corpus with authors

We can also usecharacterize_au. The first column of any of these data frames will contain the authors' names themselves. The other columns contains several author based metrics.

au<- characterize_au(scimeetr_list)head(au$com1)
AUHHLHHHLHLocal_citGlobal_citnb_paperslocal2globalfa_nb_paper_citedfa_total_cit
HERZOG F6104957293120.1945392532
MATZDORF B56355213870.3768116541
SCHUPBACH B58474227490.153284715
BURTON RJF45354316650.259036111154
DRECHSLER M4524206450.3125000733
JEANNERET P46452514360.1748252310

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Scimeetr object structure and navigation

A scimeetr object such asscimeetr_list contains more data than what can be seen withprint andsummary. A scimeetr object is in fact a list of communities list which are themselves list of up to 9 elements. Each communities contain a data.frame calleddfsci. This dataframe contains all the bibliometric data that was importedintoR.

scimeetr_list$com1$dfsci
PTAUBABEGPAFBFCATISOSEBSLADTCTCYCLSPHODEIDC1RPEMRIOIFUNRTCZ9U1U2PUPIPASNEIBNJ9JIPDPYVLISPNSUSIMABPEPARDID2PGWCSCGAUTPMRECID
JHolstead, KL; Kenyon, W; Rouillard, JJ; Hopkins, J; Galan-Diaz, CNANANAHolstead, K. L.; Kenyon, W.; Rouillard, J. J.; Hopkins, J.; Galan-Diaz, C.NANatural flood management from the farmer's perspective: criteria that affect uptakeJOURNAL OF FLOOD RISK MANAGEMENTNANAEnglishArticleNatural flood management; catchment management; flood risk management; farmer decision making; land use changeDECISION-MAKING; BEHAVIOR; CONSERVATIONISTS; PARTICIPATION; ATTITUDES; SCHEMES; ENGLAND[Holstead, K. L.; Kenyon, W.; Hopkins, J.] James Hutton Inst, Social Econ & Geog Sci Grp, Aberdeen AB15 8QH, Scotland; [Rouillard, J. J.] Univ Dundee, Sch Environm, Dundee, Scotland; [Galan-Diaz, C.] Dot Rural Univ Aberdeen, Aberdeen, ScotlandHolstead, KL (reprint author), James Hutton Inst, Social Econ & Geog Sci Grp, Aberdeen AB15 8QH, Scotland.kirsty.holstead@hutton.ac.ukScottish Government's Rural and Environment Science and Analytical Services (RESAS) Division, Work Package 2.4: Methods for mitigating and adapting to flood risk592200WILEYHOBOKEN111 RIVER ST, HOBOKEN 07030-5774, NJ USA1753-318XNAJ FLOOD RISK MANAGJ. Flood Risk Manag.JUN2017102NASINA20521810.1111/jfr3.12129NA14Environmental Sciences; Water ResourcesEnvironmental Sciences & Ecology; Water ResourcesEU4HBWOS:000400989300008NAHOLSTEAD KL, 2017, J FLOOD RISK MANAG, 10, 205

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Making reading lists

If we are confident that the papers contained inscimeetr_list are those for which we want a reading list we can used the functionscilist to find various lists of papers. The default list given byscilist contains the seminal papers for the community analysed. That is, it rank the paper by the number of times they were cited by all the papers and list them by citation frequency.

scilist(scimeetr_list)
publicationmetriclist_type
KLEIJN D, 2003, J APPL ECOL, 40, 947113core_papers
KLEIJN D, 2006, ECOL LETT, 9, 24373core_papers
KLEIJN D, 2001, NATURE, 413, 72357core_papers
BENTON TG, 2003, TRENDS ECOL EVOL, 18, 18254core_papers
PANNELL DJ, 2006, AUST J EXP AGR, 46, 140750core_papers

With the parameterk, we can control the length of the reading list.

scilist(scimeetr_list,k=3)
publicationmetriclist_type
KLEIJN D, 2003, J APPL ECOL, 40, 947113core_papers
KLEIJN D, 2006, ECOL LETT, 9, 24373core_papers
KLEIJN D, 2001, NATURE, 413, 72357core_papers

With the parameterreading_list, we can get any of the following 12 reading lists that fits into three categories:

  • Core
    • core_papers
    • core_yr
    • core_residual
  • Experts
    • by_expert_LC
    • by_expert_TC
    • group_of_experts_TC
    • group_of_experts_LC
  • Centrality
    • cite_most_others
    • betweeness
    • closeness
    • connectness
    • page_rank

The default reading list iscore_papers.

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Core

I categorise the reading lists ascore because they are reading lists of core papers as they are all a variation of the number of times papers within our community of interest refers to the paper listed. Although the number of citation is not a perfect measure of a papers importance for a community it should be a good proxy. A weekness of the number of citation as a measure of papers importance is that not all citations are equal. For example, sometimes a paper is cited because it is criticized or because it contrasts with other findings. This as been realised by others before and some have attempted to fix it by creating the concept of influential citation. Influential citation is a great concept by to be calculated it requires advance text processing and access to the full text of each papers. As it is notoriosly time consuming to get full text and even harder to get it in the right format, we are left with citation count.

Most cited per year

Usingscilist withreading_list = "core_yr" will list the most cited paper for each year from three years before present to ten years before present. The parameterk controls the number of paper per year to list.

scilist(scimeetr_list,reading_list="core_yr",k=2)
publicationmetriclist_type
GILL RJ, 2016, ADV ECOL RES, 54, 1352core_yr
KARPOVICH D., 2016, SAGINAW BAY OPTIMIZA2core_yr
PEREIRA P, 2016, LAND DEGRAD DEV, 27, 8712core_yr
SIMONSEN CE, 2016, J APPL ECOL, 53, 9162core_yr
BATARY P, 2015, CONSERV BIOL, 29, 10068core_yr
PRAGER K, 2015, CURR OPIN ENV SUST, 12, 594core_yr
SCHOMERS S, 2015, LAND USE POLICY, 42, 584core_yr
PE'ER G, 2014, SCIENCE, 344, 10909core_yr
MEICHTRY-STIER KS, 2014, AGR ECOSYST ENVIRON, 189, 1015core_yr
RIBEIRO PF, 2014, AGR ECOSYST ENVIRON, 183, 1385core_yr
BURTON RJF, 2013, LAND USE POLICY, 30, 62825core_yr
UTHES S, 2013, ENVIRON MANAGE, 51, 25116core_yr
BAUMGART-GETZ A, 2012, J ENVIRON MANAGE, 96, 1717core_yr
EMERY SB, 2012, J RURAL STUD, 28, 21812core_yr

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More cited than expected

Usingscilist withreading_list = "core_residual" will list the papers that diverge most from the expected number of citation for this particular paper. This can be visualised in the figure below. The point that have the biggest difference between their frequency value and the fitted blue lines are listed in thecore_residual reading list.

Here is an example of the code and its result.

scilist(scimeetr_list,reading_list="core_residual",k=3)
publicationmetriclist_type
KLEIJN D, 2003, J APPL ECOL, 40, 947113core_residual
MORRIS C, 1995, J RURAL STUD, 11, 5147core_residual
ERVIN CA, 1982, LAND ECON, 58, 27715core_residual

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Experts

The reading lists that I categorise asexpert are built from authors information. Experts within a community are identified based on the number of papers they published and the number of times each of their papers are cited.

Recent paper of a few experts

Usingscilist withreading_list = "by_expert_LC" we will get a list of recent papers by one or a few experts in the community. For the optionby_expert_LC, authors are ranked based on theirharmonic local H-index. The H-index is a measure of an other productivity and impact. An author with an H-index of 10 means that he has published at least 10 papers with 10 or more citation each. A local H-index means that only citations from other papers in the community are counted. A harmonic local H-index means that authors do not get the full credit for each citation their paper received. It is corrected depending on the authos position in the authors list. First authors gets most of the credit, then the last author gets the second most, and the authors gets credit as a proportion of their position. Once the authors harmonic-local-H-index is found they are ranked and them most recent publication of thek most 'expert' authors are listed as a reading list.

scilist(scimeetr_list,reading_list="by_expert_LC",k=2,m=2)
publicationmetriclist_type
SEREKE F, 2015, AGRON SUSTAIN DEV, 35, 759Herzog, F h-index : 6by_expert_LC
KELEMEN E, 2013, LAND USE POLICY, 35, 318Herzog, F h-index : 6by_expert_LC
MEYER C, 2016, LAND USE POLICY, 55, 352Matzdorf, B h-index : 5by_expert_LC
SCHOMERS S, 2015, SUSTAINABILITY-BASEL, 7, 13856Matzdorf, B h-index : 5by_expert_LC
SCHOMERS S, 2015, LAND USE POLICY, 42, 58Matzdorf, B h-index : 5by_expert_LC
SCHUPBACH B, 2016, LAND USE POLICY, 53, 27Schupbach, B h-index : 5by_expert_LC
AVIRON S, 2011, RESTOR ECOL, 19, 500Schupbach, B h-index : 5by_expert_LC
JUNGE X, 2011, BIOL CONSERV, 144, 1430Schupbach, B h-index : 5by_expert_LC

Usingscilist withreading_list = "by_expert_TC" instead ofreading_list = "by_expert_LC", notice the_TC instead of the_LC will based the ranking calculation ontotal citation of it's publications instead of only thelocal citations.

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Paper of experts group

Usingscilist withreading_list = "group_of_experts_LC" we will get a list of papers for which many authors are experts in the community. For this option, authors are assigned aharmonic local H-index like described in the previous section. But this time, a weighted sum of the harmonic-local-H-index of each authors of a paper is calculated.

scilist(scimeetr_list,reading_list="group_of_experts_LC",k=5)
publicationmetriclist_type
HERZOG F, 2005, AGR ECOSYST ENVIRON, 108, 1898.678571group_of_experts_LC
AVIRON S, 2011, RESTOR ECOL, 19, 5008.383333group_of_experts_LC
AVIRON S, 2007, AGR ECOSYST ENVIRON, 122, 2958.166667group_of_experts_LC
AVIRON S, 2005, GRASSLAND SCI EUR, 10, 3407.955952group_of_experts_LC
KAMPMANN D, 2008, J NAT CONSERV, 16, 127.926190group_of_experts_LC

Usingscilist withreading_list = "group_of_experts_TC" instead ofreading_list = "group_of_experts_LC", notice the_TC instead of the_LC will based the ranking calculation ontotal citation of it's publications instead of only thelocal citations.

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Centrality

Their are several measures ofnodes centrality in graph theory. The most central papers of a community of papers can be found withscilist.

Betweeness

Betweeness measures the importance of a paper in connecting two clusters of papers. Papers with a high betweeness would therefore be a paper that tend to be more interdisciplinary.

scilist(scimeetr_list,reading_list="betweeness",k=5)
publicationmetriclist_type
UTHES S, 2013, ENVIRON MANAGE, 51, 2510.4474377betweeness
FISCHER J, 2012, CONSERV LETT, 5, 1670.4051355betweeness
JARVIS DI, 2011, CRIT REV PLANT SCI, 30, 1250.2773863betweeness
XIONG Y, 2010, J GEOGR SCI, 20, 3890.1677135betweeness
WADE MR, 2008, PHILOS T R SOC B, 363, 8310.1211110betweeness

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Closeness

Closeness measures the average number of link between a paper and all other papers. Papers with a high closeness would therefore be a paper that tend to have a large and wide list of citations.

scilist(scimeetr_list,reading_list="closeness",k=5)
publicationmetriclist_type
UTHES S, 2013, ENVIRON MANAGE, 51, 2510.0327660closeness
FISCHER J, 2012, CONSERV LETT, 5, 1670.0327537closeness
JARVIS DI, 2011, CRIT REV PLANT SCI, 30, 1250.0327450closeness
XIONG Y, 2010, J GEOGR SCI, 20, 3890.0327312closeness
WADE MR, 2008, PHILOS T R SOC B, 363, 8310.0327184closeness

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Connectness

Connectness measures the number of links a paper has. Papers with a high connectness would therefore be a paper that tend to have cited what most other studies cited.

scilist(scimeetr_list,reading_list="connectness",k=5)
publicationmetriclist_type
METTEPENNINGEN E, 2013, LAND USE POLICY, 33, 20341connectness
GUILLEM EE, 2013, LAND USE POLICY, 31, 565317connectness
UTHES S, 2013, ENVIRON MANAGE, 51, 251305connectness
BURTON RJF, 2013, LAND USE POLICY, 30, 628305connectness
WADE MR, 2008, PHILOS T R SOC B, 363, 831295connectness

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Page rank

Page rank was developped by Larry Page at google and it's a way to measure web page importance. The algorithm was applied to directed graph, so I am not sure of the consequence of applying it on the undirected graph that we have here.

scilist(scimeetr_list,reading_list="page_rank",k=5)
publicationmetriclist_type
MORRIS C, 2004, LAND USE POLICY, 21, 1770.0355645page_rank
MATHIJS E, 2003, OUTLOOK AGR, 32, 130.0288389page_rank
LINDEMANN-MATTHIES P, 2010, LANDSCAPE URBAN PLAN, 98, 990.0256324page_rank
WATZOLD F, 2010, BIODIVERS CONSERV, 19, 20530.0249663page_rank
HERZOG F, 2005, AGR ECOSYST ENVIRON, 108, 1750.0221489page_rank

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Cite most others

With the optioncite_most_others, the papers that cite most other papers of the community can be found. This is not a centrality measure but it is also based on papers connection to each other. It should tend to find litterature review and recent papers that have an especially good grasp on the community.

scilist(scimeetr_list,reading_list="cite_most_others",k=5)
publicationmetriclist_type
UTHES S, 2013, ENVIRON MANAGE, 51, 25124cite_most_others
HEJNOWICZ AP, 2016, LAND USE POLICY, 55, 24016cite_most_others
SCHOMERS S, 2015, SUSTAINABILITY-BASEL, 7, 1385613cite_most_others
SCHOMERS S, 2015, LAND USE POLICY, 42, 5812cite_most_others
DEDEURWAERDERE T, 2015, ECOL ECON, 119, 2411cite_most_others

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Finding the main communities of research

In the previous sections we have looked at only the main research community. But, splitting the main community in sub-communities can provide a more detail picture of the litterature. It can also help identify and then remove irrelevant sub-communities. To achieve any of this, the sub-communities have to be identified and characterized. The functionscimap, as in science map, was developped for this task. By default, the graph use bibliographic coupling to calculate connections between papers, but coupling can also be done based on abstract words (abc), title words (tic) or keywords (kec).

summary(scimap(scimeetr_list,coupling_by='bic',community_algorithm='louvain',min_com_size=100))
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##           comID                      tag                   ltag$tag## 1    com1 (742)                                                    ## 2                           BIODIVERSITY                           ## 3                           CONSERVATION                           ## 4                             MANAGEMENT                           ## 5                            AGRICULTURE                           ## 6               AGRI-ENVIRONMENT SCHEMES                           ## 7                     ECOSYSTEM SERVICES                           ## 8  com1_1 (358)                                                    ## 9                                                          ADOPTION## 10                                                    PARTICIPATION## 11                                                      AGRICULTURE## 12                                                          FARMERS## 13                                                           POLICY## 14                                       AGRI-ENVIRONMENTAL SCHEMES## 15 com1_3 (265)                                                    ## 16                                                     BIODIVERSITY## 17                                         AGRI-ENVIRONMENT SCHEMES## 18                                                       MANAGEMENT## 19                                          AGRICULTURAL LANDSCAPES## 20                                                        DIVERSITY## 21                                                     CONSERVATION
summary(scimap(scimeetr_list,coupling_by='abc',community_algorithm='louvain',min_com_size=100))
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##           comID                      tag                   ltag$tag## 1    com1 (742)                                                    ## 2                           BIODIVERSITY                           ## 3                           CONSERVATION                           ## 4                             MANAGEMENT                           ## 5                            AGRICULTURE                           ## 6               AGRI-ENVIRONMENT SCHEMES                           ## 7                     ECOSYSTEM SERVICES                           ## 8  com1_2 (249)                                                    ## 9                                                          ADOPTION## 10                                                        AUSTRALIA## 11                                                    WATER QUALITY## 12                                                          FARMERS## 13                                                       INCENTIVES## 14                                                       MANAGEMENT## 15 com1_3 (243)                                                    ## 16                                                      AGRICULTURE## 17                                                    PARTICIPATION## 18                                                          SCHEMES## 19                                       COMMON AGRICULTURAL POLICY## 20                                                           POLICY## 21                                       AGRI-ENVIRONMENTAL SCHEMES## 22 com1_1 (249)                                                    ## 23                                                     BIODIVERSITY## 24                                         AGRI-ENVIRONMENT SCHEMES## 25                                                        DIVERSITY## 26                                                     CONSERVATION## 27                                                       MANAGEMENT## 28                                          AGRICULTURAL LANDSCAPES
summary(scimap(scimeetr_list,coupling_by='tic',community_algorithm='louvain',min_com_size=100))
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##           comID                      tag                   ltag$tag## 1    com1 (742)                                                    ## 2                           BIODIVERSITY                           ## 3                           CONSERVATION                           ## 4                             MANAGEMENT                           ## 5                            AGRICULTURE                           ## 6               AGRI-ENVIRONMENT SCHEMES                           ## 7                     ECOSYSTEM SERVICES                           ## 8  com1_6 (175)                                                    ## 9                                                       AGRICULTURE## 10                                                       MANAGEMENT## 11                                                     CONSERVATION## 12                                                     BIODIVERSITY## 13                                               ECOSYSTEM SERVICES## 14                                                  LAND-USE CHANGE## 15 com1_4 (126)                                                    ## 16                                                       MANAGEMENT## 17                                               ECOSYSTEM SERVICES## 18                                                  INTENSIFICATION## 19                                                     BIODIVERSITY## 20                                                SOIL CONSERVATION## 21                                        BIODIVERSITY CONSERVATION## 22 com1_3 (131)                                                    ## 23                                                     BIODIVERSITY## 24                                              AGRICULTURAL POLICY## 25                                         AGRI-ENVIRONMENT SCHEMES## 26                                                     CONSERVATION## 27                                                         LAND-USE## 28                                                       INDICATORS## 29 com1_5 (161)                                                    ## 30                                                          SCHEMES## 31                                                     BIODIVERSITY## 32                                                     CONSERVATION## 33                                                       MANAGEMENT## 34                                          AGRICULTURAL LANDSCAPES## 35                                       AGRI-ENVIRONMENTAL SCHEMES
summary(scimap(scimeetr_list,coupling_by='kec',community_algorithm='louvain',min_com_size=100))
## ##  # Summary of Scimeetr ### -----------------------##     Number of papers:  742##     Number of different reference:  28526## ##     Average number of reference per paper:  51## ##     Quantiles of total citation per paper: ## ##      0%     25%     50%     75%    100% ##    0.00    2.00    7.00   19.75 1333.00 ## ##     Mean number of citation per paper:  19.81536## ##     Average number of citation per paper per year:  1.2## ## ##   Table of the 10 most mentionned keywords ## ##                       Keyword    Frequency## 1                BIODIVERSITY           57## 2                 AGRICULTURE           46## 3  COMMON AGRICULTURAL POLICY           32## 4          ECOSYSTEM SERVICES           31## 5                CONSERVATION           28## 6    AGRI-ENVIRONMENT SCHEMES           27## 7     AGRI-ENVIRONMENT SCHEME           20## 8  AGRI-ENVIRONMENTAL SCHEMES           19## 9         AGRICULTURAL POLICY           18## 10              WATER QUALITY           18## ## ## ##   Table of the 10 most productive journal ## ##                                             Journal    Frequency## 1                                   LAND USE POLICY           84## 2              AGRICULTURE ECOSYSTEMS & ENVIRONMENT           37## 3               JOURNAL OF ENVIRONMENTAL MANAGEMENT           33## 4                           BIOLOGICAL CONSERVATION           24## 5                        JOURNAL OF APPLIED ECOLOGY           21## 6                              ECOLOGICAL ECONOMICS           17## 7                          JOURNAL OF RURAL STUDIES           17## 8                              AGRICULTURAL SYSTEMS           14## 9  JOURNAL OF ENVIRONMENTAL PLANNING AND MANAGEMENT           14## 10                     LANDSCAPE AND URBAN PLANNING           14## ## ## ##   Table of the most descriminant keywords ## ##           comID                      tag                     ltag$tag## 1    com1 (742)                                                      ## 2                           BIODIVERSITY                             ## 3                           CONSERVATION                             ## 4                             MANAGEMENT                             ## 5                            AGRICULTURE                             ## 6               AGRI-ENVIRONMENT SCHEMES                             ## 7                     ECOSYSTEM SERVICES                             ## 8  com1_4 (312)                                                      ## 9                                                         AGRICULTURE## 10                                                           ADOPTION## 11                                                             POLICY## 12                                                            FARMERS## 13                                         AGRI-ENVIRONMENTAL SCHEMES## 14                                                      PARTICIPATION## 15 com1_2 (209)                                                      ## 16                                                       BIODIVERSITY## 17                                           AGRI-ENVIRONMENT SCHEMES## 18                                            AGRICULTURAL LANDSCAPES## 19                                                          DIVERSITY## 20                                                       CONSERVATION## 21                                       AGRICULTURAL INTENSIFICATION## 22 com1_3 (138)                                                      ## 23                                                         MANAGEMENT## 24                                                 ECOSYSTEM SERVICES## 25                                                       CONSERVATION## 26                                                            SYSTEMS## 27                                          BIODIVERSITY CONSERVATION## 28                                                               LAND

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Focusing on a sub-community

With the functionfocus_on, it is possible to change focus on a sub-community.

scil<- scimap(scimeetr_list)scil
## ## # A scimeetr object ### ---------------------## Number of papers:  742## Number of communities:  5## Names of communities:  com1 com1_1 com1_2 com1_6 com1_3## ## Table of the 5 most mentionned words ## ##                  key_words  title_words abstract_words## 1             BIODIVERSITY CONSERVATION        FARMERS## 2             CONSERVATION AGRICULTURAL   CONSERVATION## 3               MANAGEMENT   MANAGEMENT   AGRICULTURAL## 4              AGRICULTURE       POLICY     MANAGEMENT## 5 AGRI-ENVIRONMENT SCHEMES      FARMERS         POLICY
subscil<- focus_on(scil,grab='com1_1')subscil
## ## # A scimeetr object ### ---------------------## Number of papers:  358## Number of communities:  1## Names of communities:  com1_1## ## Table of the 5 most mentionned words ## ##       key_words       title_words abstract_words## 1   AGRICULTURE           FARMERS        FARMERS## 2      ADOPTION      CONSERVATION         POLICY## 3  CONSERVATION            POLICY  ENVIRONMENTAL## 4 PARTICIPATION        MANAGEMENT   CONSERVATION## 5    MANAGEMENT AGRIENVIRONMENTAL   AGRICULTURAL

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Dive to a sub-community

With the functiondive_to, it is possible to move down to a sub-community and keep it's sub-communities.

scil<- scimap(scimap(scimeetr_list))scil
## ## # A scimeetr object ### ---------------------## Number of papers:  742## Number of communities:  11## Names of communities:  com1 com1_1 com1_1_2 com1_1_1 com1_1_4 com1_2 com1_6 com1_3 com1_3_1 com1_3_3 com1_3_4## ## Table of the 5 most mentionned words ## ##                  key_words  title_words abstract_words## 1             BIODIVERSITY CONSERVATION        FARMERS## 2             CONSERVATION AGRICULTURAL   CONSERVATION## 3               MANAGEMENT   MANAGEMENT   AGRICULTURAL## 4              AGRICULTURE       POLICY     MANAGEMENT## 5 AGRI-ENVIRONMENT SCHEMES      FARMERS         POLICY
subscil<- dive_to(scil,aim_at='com1_1')subscil
## ## # A scimeetr object ### ---------------------## Number of papers:  358## Number of communities:  4## Names of communities:  com1_1 com1_1_2 com1_1_1 com1_1_4## ## Table of the 5 most mentionned words ## ##       key_words       title_words abstract_words## 1   AGRICULTURE           FARMERS        FARMERS## 2      ADOPTION      CONSERVATION         POLICY## 3  CONSERVATION            POLICY  ENVIRONMENTAL## 4 PARTICIPATION        MANAGEMENT   CONSERVATION## 5    MANAGEMENT AGRIENVIRONMENTAL   AGRICULTURAL

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About

Scimeetr is an R package, and a shiny app that helps researchers introduce themselves into their scholarly literature. It contains a suit of function that let someone: load bibliometric data into R, make a map of peer reviewed papers by creating various networks, find research community, characterize the research communities, and generate readin…

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