开放式多实例学习框架及其在药物活性预测中的应用

Xin Huang, Shu‐Ching Chen, M. Shyu
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引用次数: 4

摘要

本文提出了一种功能强大的开放式多实例学习框架。这样一个开放的框架是强大的,因为不同的子方法可以插入到框架中来生成不同的特定的多实例学习算法。在该框架中,首先通过最小二乘误差(MSE)准则将多实例学习问题转化为无约束优化问题,然后采用开放的假设形式和梯度搜索方法构建框架。提出的多实例学习框架应用于生物信息学应用中的药物活性问题。具体而言,在Musk-I数据集上进行实验,预测药物分子的结合活性。在实验中,将指数假设模型和准牛顿方法嵌入到我们提出的框架中。实验结果表明,本文提出的框架具有良好的分类精度,证明了该框架的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An open multiple instance learning framework and its application in drug activity prediction problems
In this paper, a powerful open Multiple Instance Learning (MIL) framework is proposed. Such an open framework is powerful since different sub-methods can be plugged into the framework to generate different specific Multiple Instance Learning algorithms. In our proposed framework, the Multiple Instance Learning problem is first converted to an unconstrained optimization problem by the Minimum Square Error (MSE) criterion, and then the framework can be constructed with an open form of hypothesis and gradient search method. The proposed Multiple Instance Learning framework is applied to the drug activity problems in bioinformatics applications. Specifically, experiments are conducted on the Musk-I dataset to predict the binding activity of drug molecules. In the experiments, an algorithm with the exponential hypothesis model and the Quasi-Newton method is embedded into our proposed framework. We compare our proposed framework with other existing algorithms and the experimental results show that our proposed framework yields a good accuracy of classification, which demonstrates the feasibility and effectiveness of our framework.
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