Title :
Sentiment extraction from natural audio streams
Author :
Kaushik, Lakshmish ; Sangwan, Abhijeet ; Hansen, John H. L.
Author_Institution :
Center for Robust Speech Syst. (CRSS), Univ. of Texas at Dallas (UTD), Richardson, TX, USA
Abstract :
Automatic sentiment extraction for natural audio streams containing spontaneous speech is a challenging area of research that has received little attention. In this study, we propose a system for automatic sentiment detection in natural audio streams such as those found in YouTube. The proposed technique uses POS (part of speech) tagging and Maximum Entropy modeling (ME) to develop a text-based sentiment detection model. Additionally, we propose a tuning technique which dramatically reduces the number of model parameters in ME while retaining classification capability. Finally, using decoded ASR (automatic speech recognition) transcripts and the ME sentiment model, the proposed system is able to estimate the sentiment in the YouTube video. In our experimental evaluation, we obtain encouraging classification accuracy given the challenging nature of the data. Our results show that it is possible to perform sentiment analysis on natural spontaneous speech data despite poor WER (word error rates).
Keywords :
audio streaming; maximum entropy methods; social networking (online); speech recognition; POS tagging; WER; YouTube video; automatic sentiment detection; automatic sentiment extraction; automatic speech recognition; decoded ASR; maximum entropy modeling; natural audio streams; natural spontaneous speech data; part of speech tagging; text-based sentiment detection; tuning technique; word error rates; Abstracts; Analytical models; Databases; Engines; Optimization; Switches; YouTube; Amazon product review data; Maximum entropy; Sentiment detection; Speech Recognition; YouTube;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2013 IEEE International Conference on
Conference_Location :
Vancouver, BC
DOI :
10.1109/ICASSP.2013.6639321