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A Hybrid Approach for Real Time Domains

机译:一种实时域的混合方法

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摘要

Classification Algorithms play a significant role in predicting the behavior of new data, based on the rules, which are extracted from the behavior of existing data in the database. This paper proposes optimal predictive approach with maximum accuracy and minimum risk factor involved. The main idea is to find best classification model for different real time domains by using a hybrid approach that is different from classical classification methodologies. Every classification data model has its accuracy measurement and error percentage or risk factor. We have focused on objective analysis of wrong prediction of these algorithms with some extended vision of including all possible groups of features. In other words our proposed approach facilitate the selection of most apt classification algorithm by adding an additional layer on classification model building process, in addition to data preprocessing step. The suitability of each classification algorithm is determined by optimal value analysis of algorithm accuracy and risk factor of accepting the wrong predictions as right ones.
机译:分类算法基于从数据库中现有数据的行为中提取的规则来预测新数据的行为,在预测新数据的行为方面发挥着重要作用。本文提出了最佳预测方法,具有最大的准确性和最小的风险因素。主要思想是通过使用与经典分类方法不同的混合方法来找到不同实时域的最佳分类模型。每个分类数据模型都具有其准确性测量和误差百分比或风险因素。我们专注于对这些算法错误预测的客观分析,其中一些扩展愿景包括所有可能的功能组。换句话说,除了数据预处理步骤之外,我们所提出的方法通过在分类模型构建过程中添加附加层来促进最易于分类算法。每个分类算法的适用性由算法精度的最优值分析和接受错误预测的危险因素确定。

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