Syntactic Topic Models
Title | Syntactic Topic Models |
Publication Type | Journal Articles |
Year of Publication | 2010 |
Authors | Boyd-Graber J, Blei DM |
Journal | arXiv:1002.4665v1 |
Date Published | 2010/02/24/ |
Keywords | Computer Science - Artificial Intelligence, Computer Science - Computation and Language, Mathematics - Statistics Theory |
Abstract | The syntactic topic model (STM) is a Bayesian nonparametric model of language that discovers latent distributions of words (topics) that are both semantically and syntactically coherent. The STM models dependency parsed corpora where sentences are grouped into documents. It assumes that each word is drawn from a latent topic chosen by combining document-level features and the local syntactic context. Each document has a distribution over latent topics, as in topic models, which provides the semantic consistency. Each element in the dependency parse tree also has a distribution over the topics of its children, as in latent-state syntax models, which provides the syntactic consistency. These distributions are convolved so that the topic of each word is likely under both its document and syntactic context. We derive a fast posterior inference algorithm based on variational methods. We report qualitative and quantitative studies on both synthetic data and hand-parsed documents. We show that the STM is a more predictive model of language than current models based only on syntax or only on topics. |
URL | http://arxiv.org/abs/1002.4665 |