A Study on Analysing the impact of Feature Selection on Predictive Machine Learning Algorithms

Ramya Balabhadrapathruni, Suman De
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引用次数: 4

Abstract

In recent times, one of the most used scenarios in many industry domains is enhancing the bids or tenders made by suppliers. In this paper, we will be analyzing one such use case for studying the effects of mixed feature selection to optimize the Learning model. The use case is to target and build a predictive clustering model in such a way that the scheduler receives the suggestions based on the most optimal options. There are few feature selection, enhancement, and scaling methodologies which this paper aims to explore with real-time data. Based on the analysis, the most important feature derived would be used to predict the optimal suggestion. The results will then be compared to understand the shortfalls and strong points of this new approach based on the accuracy of prediction. A clustering model will not just help reduce the hours of manual effort put into selecting the right source but will also provide an authentic and optimal option for a scheduler's consideration.
特征选择对预测机器学习算法影响的分析研究
最近,在许多行业领域中最常用的场景之一是增强供应商的投标或投标。在本文中,我们将分析一个这样的用例来研究混合特征选择对优化学习模型的影响。这个用例是针对并构建一个预测性聚类模型,使调度器能够根据最优选项接收建议。本文针对实时数据的特征选择、增强和缩放方法很少。在此基础上,将得到的最重要特征用于预测最优建议。然后将结果进行比较,以了解基于预测准确性的新方法的缺点和优点。集群模型不仅有助于减少用于选择正确源的人工工作时间,而且还为调度器提供了一个可靠的最佳选项。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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