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Showing 1 to 15 of 77 results
Beer, Randall D.; Williams, Paul L. – Cognitive Science, 2015
There has been considerable debate in the literature about the relative merits of information processing versus dynamical approaches to understanding cognitive processes. In this article, we explore the relationship between these two styles of explanation using a model agent evolved to solve a relational categorization task. Specifically, we…
Descriptors: Cognitive Processes, Classification, Task Analysis, Systems Approach
Cleeremans, Axel – Cognitive Science, 2014
Consciousness remains a mystery--"a phenomenon that people do not know how to think about--yet" (Dennett, D. C., 1991, p. 21). Here, I consider how the connectionist perspective on information processing may help us progress toward the goal of understanding the computational principles through which conscious and unconscious processing…
Descriptors: Cognitive Processes, Computation, Brain, Metacognition
Seidenberg, Mark S.; Plaut, David C. – Cognitive Science, 2014
Rumelhart and McClelland's chapter about learning the past tense created a degree of controversy extraordinary even in the adversarial culture of modern science. It also stimulated a vast amount of research that advanced the understanding of the past tense, inflectional morphology in English and other languages, the nature of linguistic…
Descriptors: Morphemes, Morphology (Languages), Language Acquisition, Reading
McClelland, James L.; Mirman, Daniel; Bolger, Donald J.; Khaitan, Pranav – Cognitive Science, 2014
In a seminal 1977 article, Rumelhart argued that perception required the simultaneous use of multiple sources of information, allowing perceivers to optimally interpret sensory information at many levels of representation in real time as information arrives. Building on Rumelhart's arguments, we present the Interactive Activation…
Descriptors: Perception, Comprehension, Cognitive Processes, Alphabets
Botvinick, Matthew M.; Cohen, Jonathan D. – Cognitive Science, 2014
Cognitive control has long been one of the most active areas of computational modeling work in cognitive science. The focus on computational models as a medium for specifying and developing theory predates the PDP books, and cognitive control was not one of the areas on which they focused. However, the framework they provided has injected work on…
Descriptors: Cognitive Ability, Guidelines, Models, Cognitive Processes
Perfors, Amy; Navarro, Daniel J. – Cognitive Science, 2014
Human languages vary in many ways but also show striking cross-linguistic universals. Why do these universals exist? Recent theoretical results demonstrate that Bayesian learners transmitting language to each other through iterated learning will converge on a distribution of languages that depends only on their prior biases about language and the…
Descriptors: Language Universals, Language Acquisition, Diachronic Linguistics, Bias
Zarcone, Alessandra; Padó, Sebastian; Lenci, Alessandro – Cognitive Science, 2014
Logical metonymy resolution ("begin a book" ? "begin reading a book" or "begin writing a book") has traditionally been explained either through complex lexical entries (qualia structures) or through the integration of the implicit event via post-lexical access to world knowledge. We propose that recent work within the…
Descriptors: Figurative Language, Cues, German, Sentences
Vlach, Haley A.; Sandhofer, Catherine M. – Cognitive Science, 2014
Previous research on cross-situational word learning has demonstrated that learners are able to reduce ambiguity in mapping words to referents by tracking co-occurrence probabilities across learning events. In the current experiments, we examined whether learners are able to retain mappings over time. The results revealed that learners are able to…
Descriptors: Language Acquisition, Retention (Psychology), Cognitive Mapping, Educational Environment
Johanson, Megan; Papafragou, Anna – Cognitive Science, 2014
Children's overextensions of spatial language are often taken to reveal spatial biases. However, it is unclear whether extension patterns should be attributed to children's overly general spatial concepts or to a narrower notion of conceptual similarity allowing metaphor-like extensions. We describe a previously unnoticed extension of…
Descriptors: Child Language, Young Children, English, Greek
Chater, Nick; Oaksford, Mike – Cognitive Science, 2013
Judea Pearl has argued that counterfactuals and causality are central to intelligence, whether natural or artificial, and has helped create a rich mathematical and computational framework for formally analyzing causality. Here, we draw out connections between these notions and various current issues in cognitive science, including the nature of…
Descriptors: Causal Models, Intelligence, Cognitive Processes, Cognitive Science
Weisberg, Deena S.; Gopnik, Alison – Cognitive Science, 2013
Young children spend a large portion of their time pretending about non-real situations. Why? We answer this question by using the framework of Bayesian causal models to argue that pretending and counterfactual reasoning engage the same component cognitive abilities: disengaging with current reality, making inferences about an alternative…
Descriptors: Causal Models, Bayesian Statistics, Young Children, Imagination
Fenton, Norman; Neil, Martin; Lagnado, David A. – Cognitive Science, 2013
A Bayesian network (BN) is a graphical model of uncertainty that is especially well suited to legal arguments. It enables us to visualize and model dependencies between different hypotheses and pieces of evidence and to calculate the revised probability beliefs about all uncertain factors when any piece of new evidence is presented. Although BNs…
Descriptors: Networks, Bayesian Statistics, Persuasive Discourse, Models
Cooper, Richard P.; Catmur, Caroline; Heyes, Cecilia – Cognitive Science, 2013
Automatic imitation or "imitative compatibility" is thought to be mediated by the mirror neuron system and to be a laboratory model of the motor mimicry that occurs spontaneously in naturalistic social interaction. Imitative compatibility and spatial compatibility effects are known to depend on different stimulus dimensions--body…
Descriptors: Imitation, Spatial Ability, Cognitive Processes, Stimuli
Rottman, Benjamin M.; Gentner, Dedre; Goldwater, Micah B. – Cognitive Science, 2012
We investigated the understanding of causal systems categories--categories defined by common causal structure rather than by common domain content--among college students. We asked students who were either novices or experts in the physical sciences to sort descriptions of real-world phenomena that varied in their causal structure (e.g., negative…
Descriptors: Expertise, Novices, College Students, Physical Sciences
Krahmer, Emiel; Koolen, Ruud; Theune, Mariet – Cognitive Science, 2012
In a recent article published in this journal (van Deemter, Gatt, van der Sluis, & Power, 2012), the authors criticize the Incremental Algorithm (a well-known algorithm for the generation of referring expressions due to Dale & Reiter, 1995, also in this journal) because of its strong reliance on a pre-determined, domain-dependent Preference Order.…
Descriptors: Natural Language Processing, Mathematics, Computational Linguistics

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