产品销售数据调查中特征提取算法的比较分析

N. V. Razmochaeva, D. Klionskiy, N. Popov
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引用次数: 4

摘要

考虑了在被研究对象的观测中确定显著特征的问题。对特征提取算法进行了比较分析,包括相关方法、卡方准则方法、递归特征排除方法和基于随机决策树集合的算法(算法描述已根据学科领域形式化)。算法的结果-最重要的商品特征组-被额外分析,即,选择的特征进行比较:哪些标志(商品的特征)被所有算法选择,哪些没有(结果之间是否有任何交集)。在专家组的帮助下,我们回答了这个结果是否有矛盾的问题。
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Comparative Analysis of Feature Extraction Algorithms in Investigation of Products Sales Data
The problem of determining the significant characteristics in the observations of the studied objects is considered. A comparative analysis of feature extraction algorithms is carried out, including correlation methods, methods using chi-square criterion, recursive feature exclusion methods and algorithms based on an ensemble of forests of random decision trees (algorithmic descriptions have been formalized according to the subject area). The results of the algorithms - the group of the most important goods characteristics - are additionally analyzed, namely, the selected features are compared: which signs (characteristics of the goods) were chosen by all algorithms and which were not (are there any intersections among the results). With the help of an expert group, we answered the question whether there are any contradictions in the results.
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