A hybrid neural network hidden Markov model approach for automatic story segmentation

被引:0
作者
Jia Yu
Lei Xie
Xiong Xiao
Eng Siong Chng
机构
[1] Northwestern Polytechnical University,Shaanxi Provincial Key Laboratory of Speech and Image Information Processing, School of Computer Science
[2] School of Computer and Information Engineering,Temasek Laboratories@NTU
[3] Luoyang Institute of Science and Technology,undefined
[4] Nanyang Technological University,undefined
来源
Journal of Ambient Intelligence and Humanized Computing | 2017年 / 8卷
关键词
Neural network; Long short-term memory; Hidden Markov model; Multi-task learning; Story segmentation; Topic modeling;
D O I
暂无
中图分类号
学科分类号
摘要
We propose a hybrid neural network hidden Markov model (NN-HMM) approach for automatic story segmentation. A story is treated as an instance of an underlying topic (a hidden state) and words are generated from the distribution of the topic. The transition from one topic to another indicates a story boundary. Different from the traditional HMM approach, in which the emission probability of each state is calculated from a topic-dependent language model, we use deep neural network (DNN) to directly map the word distribution into topic posterior probabilities. DNN is known to be able to learn meaningful continuous features for words and hence has better discriminative and generalization capability than n-gram models. Specifically, we investigate three neural network structures: a feed-forward neural network, a recurrent neural network with long short-term memory cells (LSTM-RNN) and a modified LSTM-RNN with multi-task learning ability. Experimental results on the TDT2 corpus show that the proposed NN-HMM approach outperforms the traditional HMM approach significantly and achieves state-of-the-art performance in story segmentation.
引用
收藏
页码:925 / 936
页数:11
相关论文
共 50 条
[31]   NEURAL PREDICTIVE HIDDEN MARKOV MODEL FOR SPEECH RECOGNITION [J].
TSUBOKA, E ;
TAKADA, Y .
IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 1995, E78D (06) :676-684
[32]   Automatic Urdu Speech Recognition Using Hidden Markov Model [J].
Asadullah ;
Shaukat, Arslan ;
Ali, Hazrat ;
Akram, Usman .
2016 INTERNATIONAL CONFERENCE ON IMAGE, VISION AND COMPUTING (ICIVC 2016), 2016, :135-139
[33]   Combining hidden Markov model and fuzzy neural network for continuous recognition of complex dynamic gestures [J].
Huiyue Wu ;
Jianmin Wang ;
Xiaolong Zhang .
The Visual Computer, 2017, 33 :1265-1278
[34]   NEO-STATISTICAL METHODS OF RECOGNITION - NEURAL-NETWORK, HIDDEN MARKOV MODEL, AND THEIR HYBRIDIZATION [J].
CHO, SB .
COMPUTER STANDARDS & INTERFACES, 1994, 16 (03) :221-229
[35]   Combining hidden Markov model and fuzzy neural network for continuous recognition of complex dynamic gestures [J].
Wu, Huiyue ;
Wang, Jianmin ;
Zhang, Xiaolong .
VISUAL COMPUTER, 2017, 33 (10) :1265-1278
[36]   An Efficient Hidden Markov Model with Periodic Recurrent Neural Network Observer for Music Beat Tracking [J].
Song, Guangxiao ;
Wang, Zhijie .
ELECTRONICS, 2022, 11 (24)
[37]   On-line recognition of Korean characters using ART neural network and hidden Markov model [J].
Kim, SK ;
Park, SM ;
Lee, JK ;
Kim, HJ .
JOURNAL OF SYSTEMS ARCHITECTURE, 1998, 44 (12) :971-984
[38]   AN IMAGE SEGMENTATION APPROACH BASED ON FUZZY-NEURAL-NETWORK HYBRID SYSTEM [J].
Qian Yuntao Xie WeixinDept of Computer Sci Eng Northwestern Polytechnical University Xian Dept of Electronic Eng Xidian University Xian .
Journal of Electronics(China), 1997, (04) :352-356
[39]   Time-Inhomogeneous Hidden Bernoulli Model: An alternative to Hidden Markov Model for automatic speech recognition [J].
Kabudian, Jahanshah ;
Homayounpour, M. Mehdi ;
Ahadi, S. Mohammad .
2008 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, VOLS 1-12, 2008, :4101-+
[40]   A Hybrid Hidden Markov Model and Time-Frequency Approach to Impact Echo Signal Classification [J].
Agnimitra Sengupta ;
Sudeepta Mondal ;
S. Ilgin Guler ;
Parisa Shokouhi .
Journal of Nondestructive Evaluation, 2022, 41