条件随机场作为机器学习中的顺序分类器的综述

D. Liliana, Chan Basaruddin
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引用次数: 10

摘要

在本文中,我们提出了一个众所周知的顺序分类器在机器学习条件随机场(CRFs)的全面审查。CRFs是针对生成式隐马尔可夫模型(hmm)和判别式最大熵马尔可夫模型(memm)在序列分类问题上的局限性而提出的。CRFs被广泛用于实现具有时间维度的序列分类。在此过程中,CRFs在结构学习模式和实施领域都得到了改进。这些领域包括信息提取、图像理解、计算机视觉、行为分析、自然语言处理、生物信息学等。本综述对CRFs的主要研究进行了简明而翔实的总结。我们从几篇关于CRFs的文献论文中简要介绍了CRFs的基础、路线图和CRFs相关的实现领域。本文的贡献在于探讨了CRFs研究的路线图以及开发CRFs来解决机器学习问题,特别是序列结构问题的潜在前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review on conditional random fields as a sequential classifier in machine learning
In this paper we present a comprehensive review of a well-known sequential classifier in machine learning Conditional Random Fields (CRFs). CRFs is proposed to cope the limitation of both generative Hidden Markov Models (HMMs) and discriminative Maximum Entropy Markov Models (MEMMs) for solving the sequential classification problems. CRFs is widely used to accomplish the sequential classification which has a temporal dimension. On its way, CRFs has been improved both on the structural learning model as well as on the area of implementation. Those areas are varying from information extraction, image understanding, computer vision, behavioral analysis, natural language processing, bioinformatics, etc. This review provides a compact and informative summary of the major research on CRFs. We present a brief description about CRFs fundamental, CRFs roadmap, and CRFs related area of implementation from several literature papers on CRFs. The contribution of this paper is to explore the roadmap of CRFs research and potential prospect in developing CRFs to solve machine learning problems, particularly problems with sequential structures.
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