HiSeqGAN: High-dimensional Sequence Synthesis and Prediction
碩士 === 國立政治大學 === 資訊管理學系 === 107 === High-dimensional data sequences constantly appear in practice. State-of-the-art models such as recurrent neural networks suffer prediction accuracy from complex relations among values of attributes. Adopting unsupervised clustering that clusters data based on the...
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ndltd-TW-107NCCU53960302019-08-27T03:42:58Z http://ndltd.ncl.edu.tw/handle/hmurs8 HiSeqGAN: High-dimensional Sequence Synthesis and Prediction HiSeqGAN: 高維資料的序列合成與預測 Tien, Yun-Chieh 田韻杰 碩士 國立政治大學 資訊管理學系 107 High-dimensional data sequences constantly appear in practice. State-of-the-art models such as recurrent neural networks suffer prediction accuracy from complex relations among values of attributes. Adopting unsupervised clustering that clusters data based on their attribute value similarity results data in lower dimensions that can be structured in a hierarchical relation. It is essential to consider these data relations to improve the performance of training models. In this work, we propose a new approach to synthesize and predict sequences of data that are structured in a hierarchy. Specifically, we adopt a new hierarchical data encoding and seamlessly modify loss functions of SeqGAN as our training model to synthesize data sequences. In practice, we first use the hierarchical clustering algorithm, GHSOM, to cluster our training data. By relabelling a sample with the cluster that it falls to, we are able to use the GHSOM map to identify the hierarchical relation of samples. We then converse the clusters to the coordinate vectors with our hierarchical data encoding algorithm and replace the loss function with maximizing cosine similarity in the SeqGAN model to synthesize cluster sequences. Using the synthesized sequences, we are able to achieve better performance on high-dimension data training and prediction compared to the state-of-the-art models. Yu, Fang 郁方 2019 學位論文 ; thesis 37 en_US |
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碩士 === 國立政治大學 === 資訊管理學系 === 107 === High-dimensional data sequences constantly appear in practice. State-of-the-art models such as recurrent neural networks suffer prediction accuracy from complex relations among values of attributes. Adopting unsupervised clustering that clusters data based on their attribute value similarity results data in lower dimensions that can be structured in a hierarchical relation. It is essential to consider these data relations to improve the performance of training models. In this work, we propose a new approach to synthesize and predict sequences of data that are structured in a hierarchy. Specifically, we adopt a new hierarchical data encoding and seamlessly modify loss functions of SeqGAN as our training model to synthesize data sequences. In practice, we first use the hierarchical clustering algorithm, GHSOM, to cluster our training data. By relabelling a sample with the cluster that it falls to, we are able to use the GHSOM map to identify the hierarchical relation of samples. We then converse the clusters to the coordinate vectors with our hierarchical data encoding algorithm and replace the loss function with maximizing cosine similarity in the SeqGAN model to synthesize cluster sequences. Using the synthesized sequences, we are able to achieve better performance on high-dimension data training and prediction compared to the state-of-the-art models.
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Yu, Fang |
author_facet |
Yu, Fang Tien, Yun-Chieh 田韻杰 |
author |
Tien, Yun-Chieh 田韻杰 |
spellingShingle |
Tien, Yun-Chieh 田韻杰 HiSeqGAN: High-dimensional Sequence Synthesis and Prediction |
author_sort |
Tien, Yun-Chieh |
title |
HiSeqGAN: High-dimensional Sequence Synthesis and Prediction |
title_short |
HiSeqGAN: High-dimensional Sequence Synthesis and Prediction |
title_full |
HiSeqGAN: High-dimensional Sequence Synthesis and Prediction |
title_fullStr |
HiSeqGAN: High-dimensional Sequence Synthesis and Prediction |
title_full_unstemmed |
HiSeqGAN: High-dimensional Sequence Synthesis and Prediction |
title_sort |
hiseqgan: high-dimensional sequence synthesis and prediction |
publishDate |
2019 |
url |
http://ndltd.ncl.edu.tw/handle/hmurs8 |
work_keys_str_mv |
AT tienyunchieh hiseqganhighdimensionalsequencesynthesisandprediction AT tiányùnjié hiseqganhighdimensionalsequencesynthesisandprediction AT tienyunchieh hiseqgangāowéizīliàodexùlièhéchéngyǔyùcè AT tiányùnjié hiseqgangāowéizīliàodexùlièhéchéngyǔyùcè |
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1719237661151985664 |