Toward a theory of human memory: Data structures and access processes.Michael S. Humphreys,Janet Wiles &Simon Dennis -1994 -Behavioral and Brain Sciences 17 (4):655-667.detailsStarting from Marr's ideas about levels of explanation, a theory of the data structures and access processes in human memory is demonstrated on 10 tasks. Functional characteristics of human memory are captured implementation-independently. Our theory generates a multidimensional task classification subsuming existing classifications such as the distinction between tasks that are implicit versus explicit, data driven versus conceptually driven, and simple associative (two-way bindings) versus higher order (threeway bindings), providing a broad basis for new experiments. The formal language clarifies the (...) binding problem in episodic memory, the role of input pathways in both episodic and semantic (lexical) memory, the importance of the input set in episodic memory, and the ubiquitous calculation of an intersection in theories of episodic and lexical access. (shrink)
A Memory‐Based Theory of Verbal Cognition.Simon Dennis -2005 -Cognitive Science 29 (2):145-193.detailsThe syntagmatic paradigmatic model is a distributed, memory‐based account of verbal processing. Built on a Bayesian interpretation of string edit theory, it characterizes the control of verbal cognition as the retrieval of sets of syntagmatic and paradigmatic constraints from sequential and relational long‐term memory and the resolution of these constraints in working memory. Lexical information is extracted directly from text using a version of the expectation maximization algorithm. In this article, the model is described and then illustrated on a number (...) of phenomena, including sentence processing, semantic categorization and rating, short‐term serial recall, and analogical and logical inference. Subsequently, the model is used to answer questions about a corpus of tennis news articles taken from the Internet. The model's success demonstrates that it is possible to extract propositional information from naturally occurring text without employing a grammar, defining a set of heuristics, or specifying a priori a set of semantic roles. (shrink)
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Comparing Methods for Single Paragraph Similarity Analysis.Benjamin Stone,Simon Dennis &Peter J. Kwantes -2011 -Topics in Cognitive Science 3 (1):92-122.detailsThe focus of this paper is two-fold. First, similarities generated from six semantic models were compared to human ratings of paragraph similarity on two datasets—23 World Entertainment News Network paragraphs and 50 ABC newswire paragraphs. Contrary to findings on smaller textual units such as word associations (Griffiths, Tenenbaum, & Steyvers, 2007), our results suggest that when single paragraphs are compared, simple nonreductive models (word overlap and vector space) can provide better similarity estimates than more complex models (LSA, Topic Model, SpNMF, (...) and CSM). Second, various methods of corpus creation were explored to facilitate the semantic models’ similarity estimates. Removing numeric and single characters, and also truncating document length improved performance. Automated construction of smaller Wikipedia-based corpora proved to be very effective, even improving upon the performance of corpora that had been chosen for the domain. Model performance was further improved by augmenting corpora with dataset paragraphs. (shrink)
Latent Relations at Steady‐state with Associative Nets.Kevin D. Shabahang,Hyungwook Yim &Simon J. Dennis -2024 -Cognitive Science 48 (9):e13494.detailsModels of word meaning that exploit patterns of word usage across large text corpora to capture semantic relations, like the topic model and word2vec, condense word-by-context co-occurrence statistics to induce representations that organize words along semantically relevant dimensions (e.g., synonymy, antonymy, hyponymy, etc.). However, their reliance on latent representations leaves them vulnerable to interference, makes them slow learners, and commits to a dual-systems account of episodic and semantic memory. We show how it is possible to construct the meaning of words (...) online during retrieval to avoid these limitations. We implement a spreading activation account of word meaning in an associative net, a one-layer highly recurrent network of associations, called a Dynamic-Eigen-Net, that we developed to address the limitations of earlier variants of associative nets when scaling up to deal with unstructured input domains like natural language text. We show that spreading activation using a one-hot coded Dynamic-Eigen-Net outperforms the topic model and reaches similar levels of performance as word2vec when predicting human free associations and word similarity ratings. Latent Semantic Analysis vectors reached similar levels of performance when constructed by applying dimensionality reduction to the Shifted Positive Pointwise Mutual Information but showed poorer predictability for free associations when using an entropy-based normalization. An analysis of the rate at which the Dynamic-Eigen-Net reaches asymptotic performance shows that it learns faster than word2vec. We argue in favor of the Dynamic-Eigen-Net as a fast learner, with a single-store, that is not subject to catastrophic interference. We present it as an alternative to instance models when delegating the induction of latent relationships to process assumptions instead of assumptions about representation. (shrink)
Domestic Temporalities: Sensual Patterning in Persian Migratory Landscapes.Simone Dennis &Megan Warin -2007 -Indo-Pacific Journal of Phenomenology 7 (2):1-9.detailsWhen dealing with the moving worlds of migration among the Persian diaspora in Australia, memories cannot simply be removed to dusty attic boxes to be stored as an archive. Rather, this analysis takes the body and its sensory engagement with the world as a central focus, arguing that memories are crafted, tasted, smelt and touched in everyday temporalities. In the kitchens and lounges of Persian migrant women the lived past refuses to become undone from the countless revolutions of food, talk (...) and domestic activity that are central to the patterning of memory. In this paper, we argue that these intimate practices have references beyond their domestic dimensions, for they point to a worldly movement of life writ domestically small. It is via a sensory network that the spatially and temporally disparate worlds of homeland and new homes are remembered and forgotten, and where miniature worlds call out to the movement of migration. Indo-Pacific Journal of Phenomenology , Volume 7, Edition 2 September 2007. (shrink)
Mathematical constraints on a theory of human memory - Response.S. Dennis,M. S. Humphreys &J. Wiles -1996 -Behavioral and Brain Sciences 19 (3):559-560.detailsColonius suggests that, in using standard set theory as the language in which to express our computational-level theory of human memory, we would need to violate the axiom of foundation in order to express meaningful memory bindings in which a context is identical to an item in the list. We circumvent Colonius's objection by allowing that a list item may serve as a label for a context without being identical to that context. This debate serves to highlight the value of (...) specifying memory operations in set theoretic notation, as it would have been difficult if not impossible to formulate such an objection at the algorithmic level. (shrink)
Possible roles for a predictor plus comparator mechanism in human episodic recognition memory and imitative learning.Simon Dennis &Michael Humphreys -1995 -Behavioral and Brain Sciences 18 (4):678-679.detailsThis commentary is divided into two parts. The first considers a possible role for Gray's predictor plus comparator mechanism in human episodic recognition memory. It draws on the computational specifications of recognition outlined in Humphreys et al. (1994) to demonstrate how the logically necessary components of recognition tasks might be mapped onto the mechanism. The second part demonstrates how the mechanism outlined by Gray might be implicated in a form of imitative learning suitable for the acquisition of complex tasks.
Dual processes in memory: Evidence from memory of time-of-occurrence of events.Vishnu Sreekumar,Hyungwook Yim,Kareem A. Zaghloul &Simon J. Dennis -2019 -Behavioral and Brain Sciences 42.detailsBastin et al. present a framework that draws heavily on existing ideas of dual processes in memory in order to make predictions about memory deficits in clinical populations. It has been difficult to find behavioral evidence for multiple memory processes but we offer some evidence for dual processes in a related domain: memory for the time-of-occurrence of events.