Semantic Priming and the Verification of Semantic Relations

Semantic Priming and the Verification of Semantic Relations PDF Author: John Irving Kiger
Publisher:
ISBN:
Category : Meaning (Psychology)
Languages : en
Pages : 122

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Semantic Priming and the Verification of Semantic Relations

Semantic Priming and the Verification of Semantic Relations PDF Author:
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Semantic Priming and the Verification of Semantic Relations

Semantic Priming and the Verification of Semantic Relations PDF Author: John Irving Kiger (III.)
Publisher:
ISBN:
Category :
Languages : en
Pages : 61

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Semantic Priming

Semantic Priming PDF Author: Timothy P. McNamara
Publisher: Psychology Press
ISBN: 1135432546
Category : Psychology
Languages : en
Pages : 315

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Book Description
Semantic priming has been a focus of research in the cognitive sciences for more than thirty years and is commonly used as a tool for investigating other aspects of perception and cognition, such as word recognition, language comprehension, and knowledge representations. Semantic Priming: Perspectives from Memory and Word Recognition examines empirical and theoretical advancements in the understanding of semantic priming, providing a succinct, in-depth review of this important phenomenon, framed in terms of models of memory and models of word recognition. The first section examines models of semantic priming, including spreading activation models, the verification model, compound-cue models, distributed network models, and multistage activation models (e.g. interactive-activation model). The second section examines issues and findings that have played an especially important role in testing models of priming and includes chapters on the following topics: methodological issues (e.g. counterbalancing of materials, choice of priming baselines); automatic vs. strategic priming; associative vs. “pure” semantic priming; mediated priming; long-term semantic priming; backward priming; unconscious priming; the prime-task effect; list context effects; effects of word frequency, stimulus quality, and stimulus repetition; and the cognitive neuroscience of semantic priming. The book closes with a summary and a discussion of promising new research directions. The volume will be of interest to a wide range of researchers and students in the cognitive sciences and neurosciences.

Verification of Semantic Priming Effects Using the Post-cue Task

Verification of Semantic Priming Effects Using the Post-cue Task PDF Author: Lauren Green
Publisher:
ISBN:
Category : Memory
Languages : en
Pages : 110

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Semantic Distance and the Verification of Semantic Relations

Semantic Distance and the Verification of Semantic Relations PDF Author: Lance J. Rips
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Semantic Priming

Semantic Priming PDF Author: Timothy P. McNamara
Publisher: Psychology Press
ISBN: 1135432554
Category : Language Arts & Disciplines
Languages : en
Pages : 189

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Book Description
Semantic priming - the improvement in speed or accuracy to respond to a word when it is preceded by a semantically related word - is addressed in this volume, which provides a succinct and in-depth overview of this important phenomenon.

Priming of Semantic Relations and Anagram Solutions

Priming of Semantic Relations and Anagram Solutions PDF Author: Brian Arthur Sundermeier
Publisher:
ISBN:
Category :
Languages : en
Pages : 204

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Semantic Relations Between Nominals

Semantic Relations Between Nominals PDF Author: Vivi Nastase
Publisher: Morgan & Claypool Publishers
ISBN: 1636390870
Category : Computers
Languages : en
Pages : 236

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Book Description
Opportunity and Curiosity find similar rocks on Mars. One can generally understand this statement if one knows that Opportunity and Curiosity are instances of the class of Mars rovers, and recognizes that, as signalled by the word on, ROCKS are located on Mars. Two mental operations contribute to understanding: recognize how entities/concepts mentioned in a text interact and recall already known facts (which often themselves consist of relations between entities/concepts). Concept interactions one identifies in the text can be added to the repository of known facts, and aid the processing of future texts. The amassed knowledge can assist many advanced language-processing tasks, including summarization, question answering and machine translation. Semantic relations are the connections we perceive between things which interact. The book explores two, now intertwined, threads in semantic relations: how they are expressed in texts and what role they play in knowledge repositories. A historical perspective takes us back more than 2000 years to their beginnings, and then to developments much closer to our time: various attempts at producing lists of semantic relations, necessary and sufficient to express the interaction between entities/concepts. A look at relations outside context, then in general texts, and then in texts in specialized domains, has gradually brought new insights, and led to essential adjustments in how the relations are seen. At the same time, datasets which encompass these phenomena have become available. They started small, then grew somewhat, then became truly large. The large resources are inevitably noisy because they are constructed automatically. The available corpora—to be analyzed, or used to gather relational evidence—have also grown, and some systems now operate at the Web scale. The learning of semantic relations has proceeded in parallel, in adherence to supervised, unsupervised or distantly supervised paradigms. Detailed analyses of annotated datasets in supervised learning have granted insights useful in developing unsupervised and distantly supervised methods. These in turn have contributed to the understanding of what relations are and how to find them, and that has led to methods scalable to Web-sized textual data. The size and redundancy of information in very large corpora, which at first seemed problematic, have been harnessed to improve the process of relation extraction/learning. The newest technology, deep learning, supplies innovative and surprising solutions to a variety of problems in relation learning. This book aims to paint a big picture and to offer interesting details.

Semantic Relations Between Nominals, Second Edition

Semantic Relations Between Nominals, Second Edition PDF Author: Vivi Nastase
Publisher: Springer Nature
ISBN: 3031021789
Category : Computers
Languages : en
Pages : 220

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Book Description
Opportunity and Curiosity find similar rocks on Mars. One can generally understand this statement if one knows that Opportunity and Curiosity are instances of the class of Mars rovers, and recognizes that, as signalled by the word on, rocks are located on Mars. Two mental operations contribute to understanding: recognize how entities/concepts mentioned in a text interact and recall already known facts (which often themselves consist of relations between entities/concepts). Concept interactions one identifies in the text can be added to the repository of known facts, and aid the processing of future texts. The amassed knowledge can assist many advanced language-processing tasks, including summarization, question answering and machine translation. Semantic relations are the connections we perceive between things which interact. The book explores two, now intertwined, threads in semantic relations: how they are expressed in texts and what role they play in knowledge repositories. A historical perspective takes us back more than 2000 years to their beginnings, and then to developments much closer to our time: various attempts at producing lists of semantic relations, necessary and sufficient to express the interaction between entities/concepts. A look at relations outside context, then in general texts, and then in texts in specialized domains, has gradually brought new insights, and led to essential adjustments in how the relations are seen. At the same time, datasets which encompass these phenomena have become available. They started small, then grew somewhat, then became truly large. The large resources are inevitably noisy because they are constructed automatically. The available corpora—to be analyzed, or used to gather relational evidence—have also grown, and some systems now operate at the Web scale. The learning of semantic relations has proceeded in parallel, in adherence to supervised, unsupervised or distantly supervised paradigms. Detailed analyses of annotated datasets in supervised learning have granted insights useful in developing unsupervised and distantly supervised methods. These in turn have contributed to the understanding of what relations are and how to find them, and that has led to methods scalable to Web-sized textual data. The size and redundancy of information in very large corpora, which at first seemed problematic, have been harnessed to improve the process of relation extraction/learning. The newest technology, deep learning, supplies innovative and surprising solutions to a variety of problems in relation learning. This book aims to paint a big picture and to offer interesting details.