Temporal Data Mining: An Overview

To classify data mining problems and algorithms we used two dimensions: data type and type of mining operations. One of the main issue that arise during the data mining process is treating data that contains temporal inf ormation. The area of temporal data mining has very much attention in the last decade because from the time related feature of the data, one can extract much significant information which can not be extracted by the general methods of data mining. Many interesting techniques of temporal data mining were proposed and shown to be useful in many applications. Since temporal data mining brings together techniques from different fields su ch as databases, statistics and machine learning the literature is s cattered among many different sources. In this paper, we present a survey on techniques of temporal data mining.

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