Title :
OOV Proper Name retrieval using topic and lexical context models
Author :
Sheikh, Imran ; Illina, Irina ; Fohr, Dominique ; Linares, Georges
Author_Institution :
LORIA, INRIA, Villers-lès-Nancy, France
Abstract :
Retrieving Proper Names (PNs) specific to an audio document can be useful for vocabulary selection and OOV recovery in speech recognition, as well as in keyword spotting and audio indexing tasks. We propose methods to infer and retrieve OOV PNs relevant to an audio news document by using probabilistic topic models trained over diachronic text news. LVCSR hypothesis on the audio news document is analysed for latent topics, which is then used to retrieve relevant OOV PNs. Using an LDA topic model we obtain Recall up to 0.87 and Mean Average Precision (MAP) of 0.26 with only top 10% of the retrieved OOV PNs. We further propose methods to re-score and retrieve rare OOV PNs, and a lexical context model to improve the target OOV PN rankings assigned by the topic model, which may be biased due to prominence of certain news events. Re-scoring rare OOV PNs improves Recall whereas the lexical context model improves MAP.
Keywords :
document handling; information retrieval; LVCSR hypothesis; MAP; OOV proper name retrieval; PN; audio document; audio indexing; audio news document; diachronic text; keyword spotting; lexical context models; mean average precision; probabilistic topic models; retrieving proper names; speech recognition; topic context models; vocabulary selection; Context; Context modeling; Mathematical model; Probabilistic logic; Speech; Speech recognition; Vocabulary; OOV; proper names; speech recognition;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2015 IEEE International Conference on
Conference_Location :
South Brisbane, QLD
DOI :
10.1109/ICASSP.2015.7178981