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Taiwan Academic Institutional Repository >
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"li sheng tun"
Showing items 6-15 of 47 (5 Page(s) Totally) 1 2 3 4 5 > >> View [10|25|50] records per page
| 國立成功大學 |
2016 |
An efficient algorithm to maintain the discovered frequent sequences with record deletion
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Lin, Jerry Chun-Wei; Gan, Wensheng; Hong, Tzung-Pei; Chen, Hsin-Yi; Li, Sheng-Tun |
| 國立成功大學 |
2015-10 |
A Regularized Monotonic Fuzzy Support Vector Machine Model for Data Mining With Prior Knowledge
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Li, Sheng-Tun; Chen, Chih-Chuan |
| 國立成功大學 |
2015-09 |
Evolutionary Fuzzy Relational Modeling for Fuzzy Time Series Forecasting
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Kuo, Shu-Ching; Chen, Chih-Chuan; Li, Sheng-Tun |
| 國立成功大學 |
2015-07-01 |
An Enhanced HMM-Based for Fuzzy Time Series Forecasting Model
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Cheng, Yi-Chung; Chen, Pei-Chih; Chen, Chih-Chuan; Chuang, Hui-Chi; Li, Sheng-Tun |
| 國立成功大學 |
2015 |
Incrementally updating the discovered sequential patterns based on pre-large concept
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Lin, Jerry Chun-Wei; Hong, Tzung-Pei; Gan, Wensheng; Chen, Hsin-Yi; Li, Sheng-Tun |
| 國立成功大學 |
2014-12 |
Power planning in ICT infrastructure: A multi-criteria operational performance evaluation approach
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Li, Sheng-Tun; Chou, Wei-Chien |
| 國立成功大學 |
2014-11-15 |
Credit rating with a monotonicity-constrained support vector machine model
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Chen, Chih-Chuan; Li, Sheng-Tun |
| 國立成功大學 |
2013-02 |
A fuzzy conceptualization model for text mining with application in opinion polarity classification
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Li, Sheng-Tun; Tsai, Fu-Ching |
| 國立成功大學 |
2012-12 |
An Examination of Knowledge Asset Dynamics for Competitive Advantage in a Manufacturing R&D Department
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Tsai, Ming-Hong; Li, Sheng-Tun; Lin, Chin-ho |
| 國立成功大學 |
2012-04 |
Fuzzy Time Series Forecasting With a Probabilistic Smoothing Hidden Markov Model
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Cheng, Yi-Chung; Li, Sheng-Tun |
Showing items 6-15 of 47 (5 Page(s) Totally) 1 2 3 4 5 > >> View [10|25|50] records per page
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