中国铁路票务预订系统特征提取研究

Xi Lui, Chunhuang Liu, Weiwei Wang
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引用次数: 0

摘要

针对火车票数据分析方法多为建立预测分析模型而设计,往往善于描述主要类别的特征,而缺乏对少数类别的反映,本文提出了一种基于集划分的FEBIR数据特征提取方法。所提出的方法可以提取出有针对性的偏好类特征,而不受当前分析方法在描述未成年人特征方面的限制。该方法提取的特征规则包含定量信息,规则中属性的排序反映了特征规则对塑造类的重要程度,为决策者分析特殊类提供了足够的信息,是铁路管理者获取重点有用信息的有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Feature Extraction in China Railway Ticketing and Reservation System
Because that data analysis methods for train ticket data are mostly designed for building predictive analysis models, which are always good at describing the characteristics of major classes but are lack of reflecting the minorities, this paper presents a new method FEBIR that is based on the set-partition for data feature extraction. The presented method can distill the pointed favorite class features without the limitations of current analysis methods in characterizing the minors. The characteristic rules which are extracted by this method include quantitative information, and the order of attributes in the rules reflects how importantly they contribute to sculpture the class, so it provides enough information for decision-makers to analyze the special class and will be an effective tool for railway managers to get useful information about their focuses.
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