Support Vector Machine and Hidden Markov Model in Name Entity Recognition of Natural Language Processing

Jiaheng Li
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Abstract

This paper illustrates a comparison between the Hidden Markov Model and the Support Vector Machine, two important methodologies and tools, used in Natural Language Processing. Breaking down the model formulations of each, this paper first describes the mathematical motivations behind their applications in NLP. The mathematical motivations will be discussed through formulas, ideas, and examples. Then, this paper applies two real pre-established algorithms, one for each model, as examples to further rationalize their unique characteristics, similarities, and differences. These aspects will be broken down further into algorithmic efficiency, effectiveness, and other factors. Based on their performances analyzed through each factor, specific toolkits will be proposed, explained, and tested to optimize the test results, as the improving method. Some examples of toolkits include YamCha, TinySVM, etc. Overall, Name Entity Recognition involves different methodologies, and SVM and HMM, which represent two leading areas of NLP research, can best describe future trends and current situations.
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支持向量机和隐马尔可夫模型在自然语言处理的名称实体识别中的应用
本文比较了隐马尔可夫模型和支持向量机这两种用于自然语言处理的重要方法和工具。本文首先介绍了这两种模型在 NLP 中应用背后的数学动机。本文将通过公式、观点和示例来讨论数学动机。然后,本文将以两个预先建立的真实算法为例,进一步说明它们的独特性、相似性和差异性。这些方面将进一步细分为算法效率、有效性和其他因素。在通过每个因素分析其性能的基础上,将提出、解释和测试具体的工具包,以优化测试结果,作为改进方法。这些工具包包括 YamCha、TinySVM 等。总之,名称实体识别涉及不同的方法,而 SVM 和 HMM 作为 NLP 研究的两个领先领域,最能说明未来的趋势和现状。
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