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MOCKERY AND PROVOCATION FOR FUN: LEXICAL AND SEMANTIC REPRESENTATION IN THE RUSSIAN LANGUAGE ...
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Effect of matrix verb repetition on structural priming in PO/DO ditransitive structures ...
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РЕПРЕЗЕНТАЦИЯ ОТРИЦАТЕЛЬНЫХ ЭМОЦИЙ В ПОВЕДЕНИИ ЧЕЛОВЕКА И СПОСОБЫ ЕЕ ПЕРЕДАЧИ НА РУССКИЙ ЯЗЫК ... : REPRESENTATION OF NEGATIVE EMOTIONS IN PERSON’S BEHAVIOR AND WAYS OF ITS CONVEYING INTO RUSSIAN ...
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Enriching Word Embeddings with Food Knowledge for Ingredient Retrieval ...
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Abstract:
Smart assistants and recommender systems must deal with lots of information coming from different sources and having different formats. This is more frequent in text data, which presents increased variability and complexity, and is rather common for conversational assistants or chatbots. Moreover, this issue is very evident in the food and nutrition lexicon, where the semantics present increased variability, namely due to hypernyms and hyponyms. This work describes the creation of a set of word embeddings based on the incorporation of information from a food thesaurus - LanguaL - through retrofitting. The ingredients were classified according to three different facet label groups. Retrofitted embeddings seem to properly encode food-specific knowledge, as shown by an increase on accuracy as compared to generic embeddings (+23%, +10% and +31% per group). Moreover, a weighing mechanism based on TF-IDF was applied to embedding creation before retrofitting, also bringing an increase on accuracy (+5%, +9% and +5% ... : OASIcs, Vol. 93, 3rd Conference on Language, Data and Knowledge (LDK 2021), pages 15:1-15:15 ...
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Keyword:
Computing methodologies → Artificial intelligence; Computing methodologies → Knowledge representation and reasoning; Computing methodologies → Lexical semantics; Food Embeddings; Knowledge Graph; LanguaL; Retrofitting; Word embeddings
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URL: https://drops.dagstuhl.de/opus/volltexte/2021/14551/ https://dx.doi.org/10.4230/oasics.ldk.2021.15
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AAA4LLL - Acquisition, Annotation, Augmentation for Lively Language Learning ...
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The Role of Surface and Underlying Forms When Processing Tonal Alternations in Mandarin Chinese: A Mismatch Negativity Study
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A computational account of virtual travelers in the Montagovian generative lexicon
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In: The Semantics of Dynamic Space in French ; https://hal.archives-ouvertes.fr/hal-02093536 ; Michel Aurnague; Dejan Stosic. The Semantics of Dynamic Space in French, John Benjamins, pp.407-450, 2019, Part IV. Formal and computational aspects of motion-based narrations, 9789027203205. ⟨10.1075/hcp.66.09lef⟩ ; https://benjamins.com/catalog/hcp.66.09lef (2019)
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Quelles bases cognitives donner aux temps verbaux ? Un compte-rendu de l'état de l'art ...
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Polysemy and co-predication
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In: Glossa: a journal of general linguistics; Vol 4, No 1 (2019); 1 ; 2397-1835 (2019)
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Data from: Selective visual representation of letters and words in the left ventral occipito-temporal cortex with intracerebral recordings ...
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Quelles bases cognitives donner aux temps verbaux ? Un compte-rendu de l'état de l'art
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In: ISSN: 1661-3171 ; Nouveaux cahiers de linguistique française, Vol. 33 (2019) pp. 45-79 (2019)
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The role of orthographic input in the distributional and lexical learning of non-native speech sounds
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