PREDIKSI JEDA DALAM UCAPAN KALIMAT BAHASA INDONESIA DENGAN HIDDEN MARKOV MODEL

Authors

  • Adhitya Teguh Nugraha Universitas Tanjungpura

Keywords:

pause prediction, Hidden Markov Model, precision & recall, f-score.

Abstract

This study describes the design of  the pauses predictor application of speech sentences  in Bahasa Indonesia with Hidden Markov Model  (HMM). This application serves to determine the  pauses event that occur in Bahasa Indonesia  sentences. There are two main processes in this  application which is train to train the corpus, and  prediction to predict pause. On the train, the input text  is produced from sound files, and the output is  training corpus for HMM engine. In the prediction  process, inputs are words of Bahasa, and outputs are  pause prediction that occurred earlier in the input  sentence. The results of this study is the sentence that  has been predicted in each pause events. Testing is  done using precision and recall of training corpus and  tagging pause prediction results. The results of  precision and recall is calculated back to the f-score.  Based on the testing that has been done, showed that  the designed applications can already predict a pause  in the Indonesian sentences with precision of 0.364,  recall of 0.132, and F-score of 0.194

 

References

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Signals. Jurnal. Princeton University,

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Kurniawan, Junaedhi, 2001.

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Published

2014-10-08

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Articles