Abstract

Data Mining: extracting useful insights from large and detailed collections of data. With the increased possibilities in modern society for companies and institutions to gather data cheaply and efficiently, this subject has become of increasing importance. This interest has inspired a rapidly maturing research field with developments both on a theoretical, as well as on a practical level with the availability of a range of commercial tools. In this research work we use rule induction in data mining to obtain the accurate results with fast processing time. We using decision list induction algorithm to make order and unordered list of rules to coverage of maximum data from the data set. Using induction rule via association rule mining we can generate number of rules for training dataset to achieve accurate result with less error rate. We also use induction rule algorithms like confidence static and Shannon entropy to obtain the high rate of accurate results from the large dataset. This can also improves the traditional algorithms with good result.

Highlights

  • Data mining techniques are the result of a long process of research and product development

  • We describe first two separate and conquer algorithms for the rule induction process

  • 3.1 Induction of Ordered Rules Dataset We take life insurance policy data; we want to detect the customers who having good policy based on customer categories and we have to obtain accurate result with less computational time

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Summary

INTRODUCTION

Data mining techniques are the result of a long process of research and product development. This evolution began when Business data was first stored on computers, continued with improvements in data access and more recently, generated technologies that allow users to navigate through their data in real time. Data mining takes this evolutionary process beyond retrospective data access and navigation to prospective and proactive information delivery. Data mining is ready for application in the business community because it is supported by three technologies that are sufficiently mature: Massive data collection Powerful multiprocessor computers Data mining algorithms

Separate and Conquer paradigm
Compared to classification tree algorithms
Compared to the predictive association rule algorithms
PREVIOUS WORKS
SOLUTIONS
Association rule mining: Apriori Algorithm
CONCLUSIONS

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