A dissimilarity-based classifier for generalized sequences by a granular computing approach

A. Rizzi, Francesca Possemato, L. Livi, Azzurra Sebastiani, A. Giuliani, F. Mascioli
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引用次数: 11

Abstract

In this paper we propose a classifier for generalized sequences that is conceived in the granular computing framework. The classification system processes the input sequences of objects by means of a suited interplay among dissimilarity and clustering based techniques. The core data mining engine retrieves information granules that are used to represent the input sequences as feature vectors. Such a representation allows to deal with the original sequence classification problem through standard pattern recognition tools. We have evaluated the generalization capability of the system in an interesting case study concerning the protein folding problem. In the considered dataset, the entire E. Coli proteome was screened as for the prediction of protein relative solubility on a pure amino acids sequence basis. We report the analysis of the dataset considering different settings, showing interesting test set classification accuracy results. The developed system consents also to extract knowledge from the considered training set, by allowing the analysis of the retrieved information granules.
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基于粒度计算方法的广义序列不相似度分类器
本文提出了一种基于颗粒计算框架的广义序列分类器。该分类系统通过不相似性和聚类技术之间的适当相互作用来处理对象的输入序列。核心数据挖掘引擎检索用于将输入序列表示为特征向量的信息颗粒。这种表示允许通过标准模式识别工具处理原始序列分类问题。我们在一个关于蛋白质折叠问题的有趣案例研究中评估了该系统的泛化能力。在考虑的数据集中,筛选整个大肠杆菌蛋白质组,以纯氨基酸序列为基础预测蛋白质的相对溶解度。我们报告了考虑不同设置的数据集分析,显示了有趣的测试集分类精度结果。开发的系统还同意从考虑的训练集中提取知识,通过允许对检索到的信息颗粒进行分析。
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