Syllable-proximity evaluation in automatic speech recognition using fuzzy measures and a fuzzy integral
نویسندگان
چکیده
Absfracf-This paper describes a syllable-proximity evalual tion task within the context of an automatic speech recognition application. This task is well suited to a multipleinformation aggregation framework in which preliminary evaluations of separate information sources are combined to produce a more accurate and reliable overall evaluation than would otherwise be the case. An aggregation operator using fuzzy measures and a fuzzy integral is adopted that possesses a number of desirable properties and the fuzzy-measure parameters can be automatically learned from training data by re-casting the syllable-proximity evaluation as a classification problem. Experiments performed on spontaneous ’ speech material demonstrate that the fuzzy-integration-based aggregation approach has many advantages over alternative techniques in terms of both performance and interpretability of the system.
منابع مشابه
Application of Fuzzy-integration-based Multiple-information Aggregation in Automatic Speech Recognition
Many real-world problems can be cast into a multiple-information aggregation framework where preliminary evaluations of separate information sources are combined to produce more accurate and reliable evaluation than would otherwise be the case. In this paper we describe a syllable-proximity evaluation problem in automatic speech recognition that fits well into this aggregation framework. A fuzz...
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