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Multi-class Prediction Using Stochastic Logic Programs

机译:使用随机逻辑程序进行多类预测

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摘要

In this paper, we present a probabilistic method of dealing with multi-class classification using Stochastic Logic Programs (SLPs), a Probabilistic Inductive Logic Programming (PILP) framework that integrates probability, logic representation and learning. Multi-class prediction attempts to classify an observed datum or example into its proper classification given that it has been tested to have multiple predictions. We apply an SLP parameter estimation algorithm to a previous study in the protein fold prediction area and a multi-class classification working example, in which logic programs have been learned by Inductive Logic Programming (ILP) and a large number of multiple predictions have been detected. On the basis of several experiments, we demonstrate that PILP approaches (eg. SLPs) have advantages for solving multi-class prediction problems with the help of learned probabilities. In addition, we show that SLPs outperform ILP plus majority class predictor in both predictive accuracy and result interpretability.
机译:在本文中,我们提出了一种使用随机逻辑程序(SLP)处理多类分类的概率方法,该方法是一种将概率,逻辑表示和学习相集成的概率归纳逻辑程序(PILP)框架。假设已被测试具有多个预测,则多类别预测尝试将观察到的基准或示例分类为适当的分类。我们将SLP参数估计算法应用于蛋白质折叠预测领域的先前研究和一个多类分类的工作示例,在该示例中,通过归纳逻辑编程(ILP)学习了逻辑程序,并且检测到了大量的多个预测。在几个实验的基础上,我们证明PILP方法(例如SLP)在借助学习的概率的帮助下解决多类预测问题方面具有优势。此外,我们显示SLP在预测准确性和结果可解释性方面均优于ILP和多数类预测器。

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