Discovery of functional relationships in multi-relational data using inductive logic programming

Alexessander Alves, Rui Camacho, Eugénio C. Oliveira
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引用次数: 3

Abstract

ILP systems have been largely applied to data mining classification tasks with a considerable success. The use of ILP systems in regression tasks has been far less successful. Current systems have very limited numerical reasoning capabilities, which limits the application of ILP to discovery of functional relationships of numeric nature. This paper proposes improvements in numerical reasoning capabilities of ILP systems for dealing with regression tasks. It proposes the use of statistical-based techniques like model validation and model selection to improve noise handling and it introduces a search stopping criterium based on the PAC method to evaluate learning performance. We have found these extensions essential to improve on results over machine learning and statistical-based algorithms used in the empirical evaluation study.
用归纳逻辑编程发现多关系数据中的函数关系
ILP系统已广泛应用于数据挖掘分类任务,并取得了相当大的成功。在回归任务中使用ILP系统远没有那么成功。当前系统的数值推理能力非常有限,这限制了ILP在发现数值性质的函数关系方面的应用。本文提出了改进ILP系统处理回归任务的数值推理能力。提出了使用基于统计的技术,如模型验证和模型选择来改进噪声处理,并引入了基于PAC方法的搜索停止准则来评估学习性能。我们发现这些扩展对于改善实证评估研究中使用的机器学习和基于统计的算法的结果至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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