Data field for mining big data |
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Authors: | Shuliang Wang Ying Li Dakui Wang |
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Affiliation: | 1. State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing (LIESMARS), Wuhan University, Wuhan, China;2. School of Software, Beijing Institute of Technology, Beijing, Chinaslwang2005@whu.edu.cn;4. International School of Software, Wuhan University, Wuhan, China |
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Abstract: | AbstractBig data is a highlighted challenge for many fields with the rapid expansion of large-volume, complex, and fast-growing sources of data. Mining from big data is required for exploring the essence of data and providing meaningful information. To this end, we have previously introduced the theory of physical field to explore relations between objects in data space and proposed a framework of data field to discover the underlying distribution of big data. This paper concerns an overview of big data mining by the use of data field. It mainly discusses the theory of data field and different aspects of applications including feature selection for high-dimensional data, clustering, and the recognition of facial expression in human–computer interaction. In these applications, data field is employed to capture the intrinsic distribution of data objects for selecting meaningful features, fast clustering, and describing variation of facial expression. It is expected that our contributions would help overcome the problems in accordance with big data. |
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Keywords: | Physical field data field big data mining feature selection hierarchical clustering recognition of face expression |
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