A Comparative Study of Data Mining Process Models (KDD, CRISP-DM and SEMMA)

Data Mining is about analyzing the huge amount data and extracting of information from it for different purposes. From the last few years the field of Data Mining becomes prominent and makes huge growth. There are different standard models for data mining. All these models are defined in sequential steps. These steps help in implementing the data mining tasks. In this paper we will compare these models and give brief understanding about them.

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