A structured vector space model for word meaning in context 论文

2008引用 365
Natural Language Processing TechniquesTopic ModelingSpeech and dialogue systems

摘要

We address the task of computing vector space representations for the meaning of word occurrences, which can vary widely according to context. This task is a crucial step towards a robust, vector-based compositional account of sentence meaning. We argue that existing models for this task do not take syntactic structure sufficiently into account.