Syntactic and Semantic Features For Code-Switching Factored Language Models

4 Oct 2017Heike AdelNgoc Thang VuKatrin KirchhoffDominic TelaarTanja Schultz

This paper presents our latest investigations on different features for factored language models for Code-Switching speech and their effect on automatic speech recognition (ASR) performance. We focus on syntactic and semantic features which can be extracted from Code-Switching text data and integrate them into factored language models... (read more)

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