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Customer Relationship Management (CRM) on Banking ABSTRACT With the rampant competition in the domestic and international business, the Customer Relationship Management (CRM) has become one of matters of concern to the enterprise. CRM takes the customers as the center; it gives a new life to the enterprise organization system and optimizes the business process. In an effort to help enterprises understand their customers’ shopping behavior and the ways to retain valued customers, we propose data mining techniques. As a rising subject, data mining is playing an increasingly important role in the decision support activity of every walk of life. This paper mainly focused on the research of the customer classification and prediction in commercial banks based on Naive Bayesian classifier that accommodates the uncertainty inherent in predicting customer behavior. EXISTING SYSTEM Existing data mining had grown in usage and effectiveness; data mining applications in the commercial world have not been widely. Disadvantage: 1) Less number of features in previous system. 2) Difficulty to get accurate item set. PROPOSED SYSTEM This paper mainly focused on the research of the customer classification and prediction in Customer Relation Management concerned with data mining based on Naive Bayesian classification algorithm, which have a try to the optimization of the business process. Advantage: 1) As a rising subject, data mining is playing an increasingly important role in the decision support activity of every walk of life. 2) Get Efficient Item set result based on the customer request. MODULES 1. User Module. 2. Admin/Manager Module. 3. Association Rule. 4. Apriori Algorithm. User Module: In this module, is used to create a new account and apply the user kit to the user. One user transfers the found to another user and deposits the amount. User to apply the loan based on the requirement such as education, car and housing. Admin/Manager Module: In this module, is used to view and sanction the user loan request, user kit request. Manager to sanction the loan request based on the user details. Admin to view the item set based on the loan details using association role with Apriori algorithm. Association Rule: Association rules are if/then statements that help uncover relationships between seemingly unrelated data in a relational database or other information repository. An example of an association rule would be "If a customer buys a dozen eggs, he is 80% likely to also purchase milk." Association rules are created by analyzing data for frequent if/then patterns and using the criteria support and confidence to identify the most important relationships. Support is an indication of how frequently the items appear in the database. Confidence indicates the number of times the if/then statements have been found to be true. Apriori Algorithm: Apriori is designed to operate on databases containing transactions. The purpose of the Apriori Algorithm is to find associations between different sets of data. It is sometimes referred to as "Market Basket Analysis". Each set of data has a number of items and is called a transaction. The output of Apriori is sets of rules that tell us how often items are contained in sets of data. SYSTEM SPECIFICATION Hardware Requirements: • System : Pentium IV 2.4 GHz. • Hard Disk : 40 GB. • Floppy Drive : 1.44 Mb. • Monitor : 14’ Colour Monitor. • Mouse : Optical Mouse. • Ram : 512 Mb. • Keyboard : 101 Keyboard. Software Requirements: • Operating system : Windows XP. • Coding Language : ASP.Net with C# • Data Base : SQL Server 2005.