Novel Data Knowledge Representation with TSK-type Preprocessed Collaborative Fuzzy Rule based System

Mukesh Prasad, Er Meng Joo, Chin-Teng Lin, Om Kumar Prasad, Manoranjan Mohanty, Jagendra Singh

研究成果: Paper

摘要

A novel data knowledge representation with the combination of structure learning ability of preprocessed collaborative fuzzy clustering and fuzzy expert knowledge of Takagi-Sugeno-Kang type model is presented in this paper. The proposed method divides a huge dataset into two or more subsets of dataset. The subsets of dataset interact with each other through a collaborative mechanism in order to find some similar properties within each-other. The proposed method is useful in dealing with big data issues since it divides a huge dataset into subsets of dataset and finds common features among the subsets. The salient feature of the proposed method is that it uses a small subset of dataset and some common features instead of using the entire dataset and all the features. Before interactions among subsets of the dataset, the proposed method applies a mapping technique for granules of data and centroid of clusters. The proposed method uses information of only halve or less/more than the halve of the data patterns for the training process, and it provides an accurate and robust model, whereas the other existing methods use the entire information of the data patterns. Simulation results show that proposed method performs better than existing methods on some benchmark problems.
原文English
頁面 14-21
頁數8
DOIs
出版狀態Published - 2015
事件IEEE Symposium Series on Computational Intelligence, SSCI 2015 - Cape Town, South Africa
持續時間: 8 十二月 201510 十二月 2015

Conference

ConferenceIEEE Symposium Series on Computational Intelligence, SSCI 2015
國家South Africa
城市Cape Town
期間8/12/1510/12/15

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