SDAF:使用频繁术语的变化进行符号数据分类

M. Mahfouz, Y. El-Sonbaty, M. Ismail
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引用次数: 1

摘要

符号数据分类对于生物信息学和网络挖掘等领域中可能存在的大量高维数据的分类具有重要意义。符号数据的特征值(事件)通常不是像经典情况那样的单个值,而是值、间隔或更一般的分布的列表。本研究提出了一种符号分类算法,该算法使用从每个类样本中提取的频繁一项和频繁二项集的频率变化来区分。识别在一个类中获得足够高支持而在其他类中获得非常低支持的事件和事件对。使用已识别的项集构建符号配置文件。将输入模式与每个类的轮廓进行比较,选择与待分类对象相似度最大的类。在两个标准数据集上的实验研究表明,所提出的算法使用一小部分事件对来构建每个类的轮廓,并且与最先进的支持向量机变体相比,能够以更少的计算复杂度实现相当的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SDAF: Symbolic data classification using variations in frequent terms
Symbolic data classification is of great importance in classification of massive high dimensional data that may exist in domains such as bioinformatics and web mining. Feature values (events) of symbolic data are generally not single values, as in the classical case, but rather list of values, intervals or, more generally, distributions. This study proposes a symbolic classification algorithm that uses distinguished variations in the frequency of frequent one and two item-sets extracted from each class sample. The events and events pairs that have enough high support in one class and very low in others are identified. A symbolic profile is built using identified item-sets. Incoming pattern is compared to the profile of each class and the class that achieves maximum similarity with the object to be classified is selected. Experimental study on two standard datasets shows that the proposed algorithm uses a small subset of events pairs in building a profile of each class and is able to achieve a comparable accuracy with less computational complexity compared to variants of the state of the art SVM.
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