Atypical Information Theory For Real-Valued Data

2015 IEEE International Symposium on Information Theory (ISIT)(2015)

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摘要
Atypical sequences are subsequences of long sequences that deviates from the 'normal' data. In a previous paper we have developed an information theory approach to such sequences for discrete data. In the current paper we extend this principle to real-valued data, whereby it is possible to use signal processing tools to search for atypical data. The application of this principle is to extract a few interesting sets of information from 'big data' sets. We include a simple application to stock market data.
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关键词
Atypicality,big data
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