根据句法和语义结构进行排序的基于核的学习

Alessandro Moschitti
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引用次数: 2

摘要

核方法(km)是一种强大的机器学习技术,可以缓解数据表示问题,因为它们用数据实例之间直接定义的相似函数(核)代替特征向量之间的标量积,例如语法树(因此不再需要特征)。本教程旨在介绍支持向量机和km的基本和简化理论,用于实际应用的设计。它将描述简单工程自动分类器和学习使用结构化数据和语义处理排序算法的有效内核。一些例子将从问答、段落重新排序、短文本和长文分类、关系提取、命名实体识别、共同参考解析等方面抽取。此外,还将使用SVM-Light-TK(树内核)工具包进行一些实际演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel-based learning to rank with syntactic and semantic structures
Kernel Methods (KMs) are powerful machine learning techniques that can alleviate the data representation problem as they substitute scalar product between feature vectors with similarity functions (kernels) directly defined between data instances, e.g., syntactic trees, (thus features are not needed any longer). This tutorial aims at introducing essential and simplified theory of Support Vector Machines and KMs for the design of practical applications. It will describe effective kernels for easily engineering automatic classifiers and learning to rank algorithms using structured data and semantic processing. Some examples will be drawn from Question Answering, Passage Re-ranking, Short and Long Text Categorization, Relation Extraction, Named Entity Recognition, Co-Reference Resolution. Moreover, some practical demonstrations will be given using the SVM-Light-TK (tree kernel) toolkit.
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