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首页> 外文期刊>The international arab journal of information technology >Improving Classification Performance Using Genetic Programming to Evolve String Kernels
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Improving Classification Performance Using Genetic Programming to Evolve String Kernels

机译:使用遗传程序改进字符串核来提高分类性能

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摘要

The objective of this work is to present a novel evolutionary-based approach that can create and optimize powerful string kernels using Genetic Programming. The proposed model creates and optimizes a superior kernel, which is expressed as a combination of string kernels, their parameters, and corresponding weights. As a proof of concept to demonstrate the feasibility of the presented approach, classification performance of the newly evolved kernel versus a group of conventional single string kernels was evaluated using a challenging classification problem from biology domain known as theclassification of binder and non-binder peptides to Major Histocompatibility Complex Class II. Using 4794 strings containing 3346 binder and 1448 non-binder peptides, the present approach achieved Area Under Curve=0.80, while the 11 tested conventional string kernels have Area Under Curve ranging from 0.59 to 0.75. This significant improvement of the optimized evolved kernel over all other tested string kernels demonstrates the validity of this approach for enhancing Support Vector Machine classification. The presented approach is not exclusive for biological strings. It can be applied to solve pattern recognition problems for other types of strings as well as natural language processing.
机译:这项工作的目的是提出一种新颖的基于进化的方法,该方法可以使用遗传编程来创建和优化强大的字符串内核。所提出的模型创建并优化了高级内核,该高级内核表示为字符串内核,其参数和相应权重的组合。作为证明该方法可行性的概念验证,使用生物学领域中具有挑战性的分类问题,即结合物和非结合物肽的分类到主要组织相容性复合体II级。使用包含3346个结合剂和1448个非结合剂肽的4794个弦,本方法实现了“曲线下面积” = 0.80,而11个经过测试的常规弦内核的“曲下面积”范围为0.59至0.75。与其他所有测试过的字符串内核相比,优化后的进化内核的显着改进证明了该方法增强支持向量机分类的有效性。提出的方法并非专门针对生物弦。它可以用于解决其他类型的字符串的模式识别问题以及自然语言处理。

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