about
P1343
Encoding sequential information in semantic space models: comparing holographic reduced representation and random permutationEnriching Word Vectors with Subword InformationMore data trumps smarter algorithms: comparing pointwise mutual information with latent semantic analysis.CDAPubMed: a browser extension to retrieve EHR-based biomedical literatureThe emergence of semantic meaning in the ventral temporal pathway.Problems With Evaluation of Word Embeddings Using Word Similarity TasksWembedder: Wikidata entity embedding web serviceOpen semantic analysis: The case of word level semantics in DanishIntrinsic Evaluation of Word Vectors Fails to Predict Extrinsic PerformanceMultimodal distributional semanticsEvaluating Semantic Metrics on Tasks of Concept SimilarityLemon and Tea Are Not Similar: Measuring Word-to-Word Similarity by Combining Different MethodsVector Embedding of Wikipedia Concepts and EntitiesCommunity Evaluation and Exchange of Word Vectors at wordvectors.orgBetter Word Representations with Recursive Neural Networks for MorphologyThe S-Space package: an open source package for word space modelsInferring visual semantic similarity with deep learning and Wikidata: Introducing imagesim-353Learning Grounded Meaning Representations with AutoencodersPossible Confounds in Word-based Semantic Similarity Test DataCombining Word Embedding and Lexical Database for Semantic Relatedness MeasurementEfficient Non-parametric Estimation of Multiple Embeddings per Word in Vector SpaceNew Word Analogy Corpus for Exploring Embeddings of Czech WordsThe state of the art in semantic relatedness: a framework for comparisonWhy are these similar? Investigating item similarity types in a large digital libraryRecent advances in methods of lexical semantic relatedness – a surveySemantic Relatedness Approach for Named Entity DisambiguationWordSim353 for CzechA method for ontology-based semantic relatedness measurementDistributional Similarity for Chinese: Exploiting Characters and RadicalsSynthetic, yet natural: Properties of WordNet random walk corpora and the impact of rare words on embedding performanceCreating Semantic Representations
P2860
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P2860
description
2002 nî lūn-bûn
@nan
2002 թուականի Յունուարին հրատարակուած գիտական յօդուած
@hyw
2002 թվականի հունվարին հրատարակված գիտական հոդված
@hy
2002年の論文
@ja
2002年論文
@yue
2002年論文
@zh-hant
2002年論文
@zh-hk
2002年論文
@zh-mo
2002年論文
@zh-tw
2002年论文
@wuu
name
Placing search in context: the concept revisited
@ast
Placing search in context: the concept revisited
@da
Placing search in context: the concept revisited
@de
Placing search in context: the concept revisited
@en
Placing search in context: the concept revisited
@fo
Placing search in context: the concept revisited
@fr
Placing search in context: the concept revisited
@is
Placing search in context: the concept revisited
@kl
Placing search in context: the concept revisited
@nb
Placing search in context: the concept revisited
@nl
type
label
Placing search in context: the concept revisited
@ast
Placing search in context: the concept revisited
@da
Placing search in context: the concept revisited
@de
Placing search in context: the concept revisited
@en
Placing search in context: the concept revisited
@fo
Placing search in context: the concept revisited
@fr
Placing search in context: the concept revisited
@is
Placing search in context: the concept revisited
@kl
Placing search in context: the concept revisited
@nb
Placing search in context: the concept revisited
@nl
prefLabel
Placing search in context: the concept revisited
@ast
Placing search in context: the concept revisited
@da
Placing search in context: the concept revisited
@de
Placing search in context: the concept revisited
@en
Placing search in context: the concept revisited
@fo
Placing search in context: the concept revisited
@fr
Placing search in context: the concept revisited
@is
Placing search in context: the concept revisited
@kl
Placing search in context: the concept revisited
@nb
Placing search in context: the concept revisited
@nl
P2093
P356
P1476
Placing search in context: the concept revisited
@en
P2093
Ehud Rivlin
Gadi Wolfman
Lev Finkelstein
Yossi Matias
Zach Solan
P304
P3332
P356
10.1145/503104.503110
P407
P4510
P577
2002-01-01T00:00:00Z