Mining of Data by WEKA Tool
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Abstract
Data mining is a term that is used not only for mining data but to differentiate various algorithms with each other in terms of their parameters. Sometimes we got that information about the data that we don’t know. Mining of data depends on the working of different algorithms. Some algorithm gives a more accurate result than other while working in same area. The data is arranged according to their properties by different techniques such as clustering and classification technique. Various algorithms such as neural networks, decision tree and support vector machine algorithm come under the category of classification, by using WEKA tool.
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