基于功能的smile代码分类特征选择

D. Ratnawati, Marjono, Widodo, S. Anam
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引用次数: 3

摘要

根据活性化合物的功能对其进行分类是很重要的,因为大多数活性化合物的功能都是未知的。活性化合物的结构可以用SMILES编码表示,其结构独特、紧凑、完整。在对smile码进行分类之前,对其进行预处理是一项至关重要的工作。在本研究中,预处理是将SMILES代码提取为几个特征。特征必须表示来自SMILES代码的模式或信息,因为适当的SMILES代码特征将提高分类结果的准确性。本文在前人研究的基础上,利用专家指导下的SMILES代码特征。特征将被归一化,并通过一种高效而良好的分类方法——极限学习机(ELM)进行分类。实验结果表明:首先,在数据集1-3-4(神经-细菌-癌症)上,增加特征可以使系统的平均准确率提高10.9%;其次,ELM在准确率和处理时间上都优于SVM和KMNB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Features Selection for Classification of SMILES Codes Based on Their Function
The classification of the active compound based on their function is important to be done because most of them are unknown their function. The structure of the active compound can be represented by SMILES code that unique, compact and complete. Preprocessing SMILES code is a crucial task before SMILES codes are classified. In this research, preprocessing is extracting SMILES code into several features. The features must represent patterns or information from SMILES codes because the proper features of the SMILES codes will increase the accuracy of classification results. This paper uses features from SMILES codes directed by an expert and based on the previous research. Features will be normalized and are classified by an efficient and good classification method, Extreme Learning Machine (ELM). The experiment results show that first, adding features will increase the average of the accuracy of the system until 10.9% on dataset 1-3-4 (nerve-bacterial-cancer). Second, ELM is superior to SVM and KMNB in terms of both accuracy and processing time.
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