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MOCKERY AND PROVOCATION FOR FUN: LEXICAL AND SEMANTIC REPRESENTATION IN THE RUSSIAN LANGUAGE ...
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Formalization of AMR Inference via Hybrid Logic Tableaux ...
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Research compendium for Montero-Melis et al. (2021) "No evidence for embodiment: The motor system is not needed to keep action words in working memory" (Cortex) ...
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The JeuxDeMots Project (Invited Talk) ...
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Abstract:
The JeuxDeMots project aims at building a very large knowledge base in French, both common sense and specialized, using games, contributory approaches, and inference mechanisms. A dozen games have been designed as part of this project, each one allowing to collect specific information, or to consolidate the information acquired through the other games. With this presentation, the data collected and constructed since the launch of the project in the summer of 2007 will be analyzed both qualitatively and quantitatively. In particular, the following aspects will be detailed: the structure of the lexical and semantic network, some types of relations (semantic, ontological, subjective, semantic roles, associations of ideas), annotation of relations (meta-information), semantic refinements (management of polysemy), the creation of clusters allowing the representation of richer knowledge (n-argument relations) that make an implicit neural network. Finally, I will describe some complementary acquisition methods and ... : OASIcs, Vol. 93, 3rd Conference on Language, Data and Knowledge (LDK 2021), pages 1:1-1:1 ...
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Keyword:
Computing methodologies → Artificial intelligence; Computing methodologies → Language resources; Computing methodologies → Natural language processing; Games with a Purpose; Inferences; Knowledge Representation; Lexical Semantic Network; Semantic Representation
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URL: https://drops.dagstuhl.de/opus/volltexte/2021/14537/ https://dx.doi.org/10.4230/oasics.ldk.2021.1
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AAA4LLL - Acquisition, Annotation, Augmentation for Lively Language Learning ...
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Hy-NLI : a Hybrid system for state-of-the-art Natural Language Inference
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Plurality and quantification in graph representation of meaning
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Simulating Semantics: What Individual Differences in Motor Imagery Can Tell Us About Language Processing ...
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The building blocks of meaning: Psycholinguistic evidence on the nature of verb argument structure
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Multimodal conceptual knowledge influences lexical retrieval speed: evidence from object-naming and word-reading in healthy adults
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Formal analysis of natural language requirements for the design of cyber-physical systems ; Analyse formelle d'exigences en langue naturelle pour la conception de systèmes cyber-physiques
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In: TALN 2018 - Conférence sur le Traitement Automatique des Langues Naturelles ; https://hal.inria.fr/hal-01970134 ; TALN 2018 - Conférence sur le Traitement Automatique des Langues Naturelles, May 2018, Rennes, France. pp.1-13 (2018)
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UNSUPERVISED PARAPHRASE GENERATION FROM HIERARCHICAL LANGUAGE MODELS
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A Rule-Based Reasoner for Underwater Robots Using OWL and SWRL
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In: Sensors ; Volume 18 ; Issue 10 (2018)
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The Structure of Process of Students' Learning the Visual-Semantic Representation of a Hieroglyphs ...
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The Structure of Process of Students' Learning the Visual-Semantic Representation of a Hieroglyphs ...
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Anna Wierzbicka, Semantic Decomposition, and the Meaning-Text Approach
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In: Russian journal of linguistics: Vestnik RUDN, Vol 22, Iss 3, Pp 521-538 (2018) (2018)
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Using EEG to decode semantics during an artificial language learning task
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