Linear Regression on Internet Banking Adoption Dataset Using WEKA

N. Verma, Deepika Pathak
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Abstract

Data mining or knowledge discovery in the database (KDD) is an excellent process to find out valuable information from a large collection of data. Data mining has successfully been used in different fields such as medical, marketing, banking, business, weather forecasting, etc. For the banking industry, data mining, its importance, and its techniques are vital because it helps to extract useful information from a large amount of historical data which enable to make useful decisions. Data mining is very useful for banking sector for better acquiring and targeting new customers and helps to analyze customers and their transaction behaviors. In the recent era, a new technology that has achieved considerable attention, especially among banks, is internet banking. Its large scope of applications, its advantages brings an immoderate change in a common human's life. Linear regression is one of the most commonly used and applied data mining techniques. Linear regression is really a very fast and simple regression algorithm and can give the best performance if the output variable of your data is a linear grouping of your inputs. In this paper, the linear regression is applied on internet banking adoption dataset in order to compute the weights or coefficients of linear expression and provides the predicted class value. The analysis here is done with the help of WEKA tool for data mining.
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基于WEKA的网上银行采用数据集的线性回归
数据挖掘或数据库中的知识发现(KDD)是从大量数据中发现有价值信息的一个极好的过程。数据挖掘已经成功地应用于不同的领域,如医疗、营销、银行、商业、天气预报等。对于银行业来说,数据挖掘及其重要性和技术至关重要,因为它有助于从大量历史数据中提取有用的信息,从而做出有用的决策。数据挖掘对银行业更好地获取和定位新客户非常有用,有助于分析客户及其交易行为。在最近的时代,一项新技术已经取得了相当大的关注,特别是在银行,是网上银行。它的应用范围大,它的优点给人类的日常生活带来了翻天覆地的变化。线性回归是最常用和应用的数据挖掘技术之一。线性回归实际上是一种非常快速和简单的回归算法,如果数据的输出变量是输入的线性分组,它可以提供最佳性能。本文将线性回归应用于网上银行采用数据集,计算线性表达式的权重或系数,并给出预测的类值。这里的分析是在WEKA数据挖掘工具的帮助下完成的。
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