4 research outputs found

    Passage Retrieval and Evaluation

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    Abstract UIUC in HARD 2004 ā€“ Passage Retrieval Using HMMs

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    UIUC participated in the HARD track in TREC 2004 and focused on the evaluation of a new method for identifying variable-length passages using HMMs. Most existing approaches to passage retrieval rely on pre-segmentation of documents, but the optimal boundaries of a relevant passage depends on both the query and the document. Our new method aims at determining or improving the boundaries of a relevant passage based on both the query and topical coherence in the document. In this paper, we describe the method and present analysis of our HARD 2004 evaluation results. The results show that the HMM method can improve the boundaries of pre-segmented passages in terms of overall passage retrieval accuracy and recall, but at the price of precision sometimes. However, due to the non-optimality of the relevance feedback procedure and the poor ranking performance based on passage scoring, the best of our passage runs is still worse than a whole document baseline run. Further experiments and analysis are needed to fully understand why the language modeling approach did not work well on passage scoring.

    Spoken content retrieval beyond pipeline integration of automatic speech recognition and information retrieval

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    The dramatic increase in the creation of multimedia content is leading to the development of large archives in which a substantial amount of the information is in spoken form. Efficient access to this information requires effective spoken content retrieval (SCR) methods. Traditionally, SCR systems have focused on a pipeline integration of two fundamental technologies: transcription using automatic speech recognition (ASR) and search supported using text-based information retrieval (IR). Existing SCR approaches estimate the relevance of a spoken retrieval item based on the lexical overlap between a userā€™s query and the textual transcriptions of the items. However, the speech signal contains other potentially valuable non-lexical information that remains largely unexploited by SCR approaches. Particularly, acoustic correlates of speech prosody, that have been shown useful to identify salient words and determine topic changes, have not been exploited by existing SCR approaches. In addition, the temporal nature of multimedia content means that accessing content is a user intensive, time consuming process. In order to minimise user effort in locating relevant content, SCR systems could suggest playback points in retrieved content indicating the locations where the system believes relevant information may be found. This typically requires adopting a segmentation mechanism for splitting documents into smaller ā€œelementsā€ to be ranked and from which suitable playback points could be selected. Existing segmentation approaches do not generalise well to every possible information need or provide robustness to ASR errors. This thesis extends SCR beyond the standard ASR and IR pipeline approach by: (i) exploring the utilisation of prosodic information as complementary evidence of topical relevance to enhance current SCR approaches; (ii) determining elements of content that, when retrieved, minimise user search effort and provide increased robustness to ASR errors; and (iii) developing enhanced evaluation measures that could better capture the factors that affect user satisfaction in SCR
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