Title : 
HMMs for both labeled and unlabeled time series data
         
        
            Author : 
Inoue, Masashi ; Ueda, Naonori
         
        
            Author_Institution : 
Nara Inst. of Sci. & Technol., Japan
         
        
        
        
        
        
            Abstract : 
An insufficiency of training data often results in a poorly learned classifier. To mitigate this problem, several learning methods using both labeled and unlabeled data have been proposed. In these methods, however, only static data are considered; time series unlabeled data cannot be utilized. In this paper, we first present an extension of HMMs, named Extended Tied-Mixture HMMs (ETM-HMMs) in which both labeled and unlabeled time series data can be used simultaneously to obtain a better classification accuracy than the case only labeled data are used. The learning algorithm for the ETM-HMMs is also presented. Experiments on synthetic and gesture data demonstrated that unlabeled time series data can help improve the classification performance
         
        
            Keywords : 
hidden Markov models; learning (artificial intelligence); time series; HMMs; classification performance; extended tied-mixture HMMs; gesture data; hidden Markov models; labeled time series data; learning algorithm; learning methods; poorly learned classifier; static data; synthetic data; training data; unlabeled time series data; Hidden Markov models;
         
        
        
        
            Conference_Titel : 
Neural Networks for Signal Processing XI, 2001. Proceedings of the 2001 IEEE Signal Processing Society Workshop
         
        
            Conference_Location : 
North Falmouth, MA
         
        
        
            Print_ISBN : 
0-7803-7196-8
         
        
        
            DOI : 
10.1109/NNSP.2001.943114