A Subword Normalized Cut Approach to Automatic Story Segmentation of Chinese Broadcast News

This paper presents a subword normalized cut (N-cut) approach to automatic story segmentation of Chinese broadcast news (BN). We represent a speech recognition transcript using a weighted undirected graph, where the nodes correspond to sentences and the weights of edges describe inter-sentence simil...

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Hauptverfasser: Zhang, Jin, Xie, Lei, Feng, Wei, Zhang, Yanning
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:This paper presents a subword normalized cut (N-cut) approach to automatic story segmentation of Chinese broadcast news (BN). We represent a speech recognition transcript using a weighted undirected graph, where the nodes correspond to sentences and the weights of edges describe inter-sentence similarities. Story segmentation is formalized as a graph-partitioning problem under the N-cut criterion, which simultaneously minimizes the similarity across different partitions and maximizes the similarity within each partition. We measure inter-sentence similarities and perform N-cut segmentation on the character/syllable (i.e. subword units) overlapping n-gram sequences. Our method works at the subword levels because subword matching is robust to speech recognition errors and out-of-vocabulary words. Experiments on the TDT2 Mandarin BN corpus show that syllable-bigram-based N-cut achieves the best F1-measure of 0.6911 with relative improvement of 11.52% over previous word-based N-cut that has an F1-measure of 0.6197. N-cut at the subword levels is more effective than the word level for story segmentation of noisy Chinese BN transcripts.
ISSN:0302-9743
1611-3349
DOI:10.1007/978-3-642-04769-5_12