id author title date pages extension mime words sentences flesch summary cache txt work_57lneblzxjhgdbzxcmcswlxbxu Haitong Yang Domain Adaptation for Syntactic and Semantic Dependency Parsing Using Deep Belief Networks 2015 12 .pdf application/pdf 7358 722 70 Domain Adaptation for Syntactic and Semantic Dependency Parsing Using In current systems for syntactic and semantic dependency parsing, people usually define a very high-dimensional feature space to With additional unlabeled target domain data, our method can learn a latent feature representation (LFR) that is beneficial to For example, the relation path between a predicate and an argument is a syntactic feature used in semantic dependency parsing (Johansson and Nugues, 2008). Our DBN model is trained unsupervisedly on original feature vectors of data in both domains: training data from the source domain, and unlabeled data Using the original features, the performance drop on out-of-domain test data is 10.58 section, we introduce how our DBN model represent a data sample as a vector of latent features. data to our DBN model, we learn the LFR for semantic dependency parsing. the training time of our DBN models for both syntactic and semantic parsing. ./cache/work_57lneblzxjhgdbzxcmcswlxbxu.pdf ./txt/work_57lneblzxjhgdbzxcmcswlxbxu.txt