Title
Combining Relevance Language Modeling and Clarity Measure for Extractive Speech Summarization
Abstract
Extractive speech summarization, which purports to select an indicative set of sentences from a spoken document so as to succinctly represent the most important aspects of the document, has garnered much research over the years. In this paper, we cast extractive speech summarization as an ad-hoc information retrieval (IR) problem and investigate various language modeling (LM) methods for important sentence selection. The main contributions of this paper are four-fold. First, we explore a novel sentence modeling paradigm built on top of the notion of relevance, where the relationship between a candidate summary sentence and a spoken document to be summarized is discovered through different granularities of context for relevance modeling. Second, not only lexical but also topical cues inherent in the spoken document are exploited for sentence modeling. Third, we propose a novel clarity measure for use in important sentence selection, which can help quantify the thematic specificity of each individual sentence that is deemed to be a crucial indicator orthogonal to the relevance measure provided by the LM-based methods. Fourth, in an attempt to lessen summarization performance degradation caused by imperfect speech recognition, we investigate making use of different levels of index features for LM-based sentence modeling, including words, subword-level units, and their combination. Experiments on broadcast news summarization seem to demonstrate the performance merits of our methods when compared to several existing well-developed and/or state-of-the-art methods.
Year
DOI
Venue
2015
10.1109/TASLP.2015.2414820
IEEE/ACM Transactions on Audio, Speech and Language Processing (TASLP)
Keywords
Field
DocType
kl divergence,language modeling
Speech processing,Computer science,Context model,Natural language processing,Artificial intelligence,Language model,Multi-document summarization,Automatic summarization,CLARITY,Pattern recognition,Speech recognition,Sentence,Semantics
Journal
Volume
Issue
ISSN
23
6
2329-9290
Citations 
PageRank 
References 
8
0.48
44
Authors
6
Name
Order
Citations
PageRank
Shih-Hung Liu16614.53
Kuan-Yu Chen245055.78
Berlin Chen315134.59
Hsin-min Wang41201129.62
Hsu-chun Yen559570.67
Wen-Lian Hsu61701198.40