Data Classification Using Decision Trees J48 Algorithm for Text Mining of Business Data

Asif Yaseen
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Abstract

The business industry is generating a lot of data on daily business deals and financial transactions. These businesses are generating intensive-data like they need customer satisfaction on top priority, fulfilling their needs, etc. In every step, Data is being produced. This Data has a great value that is hidden from regular users. Data analytics is used to unhide those values. In our project, we are using a business-related dataset that contains strings and their class (0 or 1). 0 or 1 denotes the positive or negative string labels. To analyze this data, we are using a decision tree classification algorithm (J48 exceptionally) to perform text mining (classification) on our target dataset. Text mining comes under supervised learning (type). In-text mining, generally, we use two datasets. One is used to train the model, and the second dataset is used to predict the missing class labels in the second dataset based on this training model generated using the first dataset.
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基于决策树J48算法的商业数据文本挖掘数据分类
商业行业正在产生大量关于日常商业交易和金融交易的数据。这些企业正在产生密集的数据,比如他们需要把客户满意度放在首位,满足他们的需求等等。每一步都在产生数据。这些数据具有隐藏在普通用户之外的巨大价值。数据分析用于揭开这些值的隐藏。在我们的项目中,我们使用一个业务相关的数据集,其中包含字符串及其类(0或1)。0或1表示正或负字符串标签。为了分析这些数据,我们使用决策树分类算法(J48例外)对目标数据集执行文本挖掘(分类)。文本挖掘属于监督学习(类型)。文本挖掘,通常,我们使用两个数据集。一个用于训练模型,第二个数据集用于基于使用第一个数据集生成的训练模型预测第二个数据集中缺失的类标签。
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