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The Language Model Understood the Prompt was Ambiguous: Probing Syntactic Uncertainty Through Generation ...
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Does referent predictability affect the choice of referential form? A computational approach using masked coreference resolution ...
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Does referent predictability affect the choice of referential form? A computational approach using masked coreference resolution ...
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What do Entity-Centric Models Learn? Insights from Entity Linking in Multi-Party Dialogue ...
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Putting words in context: LSTM language models and lexical ambiguity ...
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Negated adjectives and antonyms in distributional semantics: not similar?
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Putting words in context: LSTM language models and lexical ambiguity
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Modeling word interpretation with deep language models: the interaction between expectations and lexical information
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AMORE-UPF at SemEval-2018 Task 4: BiLSTM with entity library
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How to represent a word and predict it, too: improving tied architectures for language modelling
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How to represent a word and predict it, too: improving tied architectures for language modelling
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What do entity-centric models learn? Insights from entity linking in multi-party dialogue
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