STATISTICAL RELATIONAL LEARNING: A STATE-OF-THE-ART REVIEW

Muhamet Kastrati, M. Biba
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Abstract

The objective of this paper is to review the state-of-the-art of statistical relational learning (SRL) models developed to deal with machine learning and data mining in relational domains in presence of missing, partially observed, and/or noisy data. It starts by giving a general overview of conventional graphical models, first-order logic and inductive logic programming approaches as needed for background. The historical development of each SRL key model is critically reviewed. The study also focuses on the practical application of SRL techniques to a broad variety of areas and their limitations.
统计关系学习:最新研究综述
本文的目的是回顾统计关系学习(SRL)模型的最新发展,这些模型用于处理存在缺失、部分观察和/或噪声数据的关系领域中的机器学习和数据挖掘。它首先给出了传统图形模型的总体概述,一阶逻辑和归纳逻辑编程方法作为背景。对每个SRL关键模型的历史发展进行了批判性的回顾。该研究还侧重于SRL技术在广泛领域的实际应用及其局限性。
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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