Word Vector Model Training Algorithm: Difference between revisions

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=== 2012 ===
=== 2012 ===
* ([[2012_ImprovingWordRepresentationsvia|Huang et al., 2012]]) ⇒ [[Eric H. Huang]], [[Richard Socher]], [[Christopher D. Manning]], and [[Andrew Y. Ng]]. ([[2012]]). “[http://jan.stanford.edu/pubs/HuangACL12.pdf Improving Word Representations via Global Context and Multiple Word Prototypes].” In: [[Proceedings of the 50th Annual Meeting of the Association for Computational Linguistics]] ([[ACL 2012]]).  
* ([[2012_ImprovingWordRepresentationsvia|Huang et al., 2012]]) ⇒ [[Eric H. Huang]], [[Richard Socher]], [[Christopher D. Manning]], and [[Andrew Y. Ng]]. ([[2012]]). “[http://jan.stanford.edu/pubs/HuangACL12.pdf Improving Word Representations via Global Context and Multiple Word Prototypes].” In: [[Proceedings of the 50th Annual Meeting of the Association for Computational Linguistics]] ([[ACL 2012]]).
** QUOTE: [[Word Vector Model Training Algorithm|Vector-space models (VSM)]] [[represent word meanings]] with [[vectors]] that capture [[semantic word information|semantic]] and [[syntactic information of word]]s. </s> These [[representation]]s can be used to induce [[similarity measure]]s by [[computing]] [[distances between the vector]]s, leading to many useful applications, such as [[information retrieval]] ([[Manning et al., 2008]]), [[document classification]] ([[Sebastiani, 2002]]) and [[question answering]] ([[Tellex et al., 2003]]). </s>
** QUOTE: [[Word Vector Model Training Algorithm|Vector-space models (VSM)]] [[represent word meanings]] with [[vectors]] that capture [[semantic word information|semantic]] and [[syntactic information of word]]s. </s> These [[representation]]s can be used to induce [[similarity measure]]s by [[computing]] [[distances between the vector]]s, leading to many useful applications, such as [[information retrieval]] ([[Manning et al., 2008]]), [[document classification]] ([[Sebastiani, 2002]]) and [[question answering]] ([[Tellex et al., 2003]]). </s>



Latest revision as of 14:11, 2 August 2022