Hierarchical Language Modeling for One-Stage Stochastic Interpretation of Natural Speech

The thesis deals with automatic interpretation of naturally spoken utterances for limited-domain applications. Specifically, the problem is examined by means of a dialogue system for an airport information application. In contrast to traditional two-stage systems, speech recognition and semantic processing are tightly coupled. This avoids interpretation errors due to early decisions. The presented one-stage decoding approach utilizes a uniform, stochastic knowledge representation based on weighted transition network hierarchies, which describe phonemes, words, word classes and semantic concepts. A robust semantic model, which is estimated by combination of data-driven and rule-based approaches, is part of this representation. The investigation of this hierarchical language model is the focus of this work. Furthermore, methods for modeling out-of-vocabulary words and for evaluating semantic trees are introduced.

File Type: pdf
File Size: 1 MB
Publication Year: 2006
Author: Thomae, Matthias
Supervisors: Gunther Ruske
Institution: Technische Universit?t M?nchen
Keywords: hierarchical language model, statistical language model, speech interpretation, speech understanding, speech recognition, spoken dialogue, one-stage decoding, robust semantic modeling, weighted transition network hierarchy, out-of-vocabulary words, OOV words, semantic tree, tree matching, semantic tree node accuracy, uniform knowledge representation, natural speech, smoothing, n-gram