Effects of Query Expansion for Spoken Document Passage Retrieval
نویسندگان
چکیده
One of the major challenges for spoken document retrieval is how to handle speech recognition errors within the target documents. Query expansion is promising for this challenge. In this paper, we apply relevance models, a type of query expansion method, for the spoken document passage retrieval task. We adapted the original relevance model for passage retrieval. We also extended it to benefit from massive collections of Web documents for query expansion. Through our experimental evaluation, we found that our relevance model successfully improved the retrieval performance. We also found that using Web documents was effective when the transcription of the target documents had a high word error rate.
منابع مشابه
DCU at the NTCIR-12 SpokenQuery&Doc-2 Task
We describe DCU’s participation in the NTCIR-12 SpokenQuery&Doc (SQD-2) task. In the context of the slide-group retrieval sub-task, we experiment with a passage retrieval method that re-scores each passage according to the relevance score of the document from which the passage is taken. This is performed by linearly interpolating their relevance scores which are calculated using the Okapi BM25 ...
متن کاملSpoken Document Retrieval by Contents Complement and Keyword Expansion Using Subordinate Concept for NTCIR-SpokenDoc
We report on the result of investigating which relationship is important among hypernym and hyponym relationships in retrieval keyword expansion. Moreover, we report the effect of the keyword expansion and the contents complement for spoken document retrieval for SCR lecture retrieval task and SCR passage retrieval task. Spoken Document Retrieval by contents complement and keyword expansion usi...
متن کاملGeneral Query Expansion Techniques for Spoken Document Retrieval
This paper presents some developments in query expansion and document representation of our Spoken Document Retrieval (SDR) system since the 1998 Text REtrieval Conference (TREC-7). We have shown that a modification of the document representation combining several techniques for query expansion can improve Average Precision by relative to a system similar to that which we presented at TREC-7 [1...
متن کاملSpoken document retrieval method combining query expansion with continuous syllable recognition for NTCIR-SpokenDoc
In this paper, we propose a spoken document retrieval method which combines query expansion with continuous syllable recognition. The proposed method expands a query by using words from the web pages collected by a search engine. It is assumed that relevant document vectors exist on the plane which is constructed from the query vector and the extended vector. The weight parameter between a targ...
متن کاملEnhancing Relevance Models with Adaptive Passage Retrieval
Passage retrieval and pseudo relevance feedback/query expansion have been reported as two effective means for improving document retrieval in literature. Relevance models, while improving retrieval in most cases, hurts performance on some heterogeneous collections. Previous research has shown that combining passage-level evidence with pseudo relevance feedback brings added benefits. In this pap...
متن کامل