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Markov Chain Monte Carlo Methods and Evolutionary Algorithms for Automatic Feature Selection from Legal Documents

机译:Markov Chain Monte Carlo方法和进化算法,用于法律文件的自动特征选择

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In this paper, we present three different approaches for feature selection, starting from a na?ve Markov Chain Monte Carlo random walk algorithm to more refined methods like simulated annealing and genetic algorithms. It is typical for textual data to have thousands of dimensions in their feature space which makes feature selection a crucial phase before the final classification. Classification of legal documents into eight categories was performed via a simple document similarity measure based on term frequency and the nearest neighbour concept. With an average success rate of 76.4%, the random walk algorithm not only performed better than the simulated annealing and genetic algorithms but also matched the accuracy of support vector machines. Although these methods have commonly been used for selecting appropriate features in other fields, their use in text categorisation have not been satisfactorily investigated. And, to our knowledge, this is the first work which investigates their use in the legal domain. This generic text classification framework can further be enhanced by using an active learning methodology for the selection of training samples rather than following a passive learning approach.
机译:在本文中,我们提出了三种不同的特征选择方法,从Na ve Markov链蒙特卡洛随机步行算法开始到更精细的方法,如模拟退火和遗传算法。典型的文本数据在其特征空间中具有数千个维度,这使得特征选择在最终分类之前的关键阶段。通过基于术语频率和最近的邻概念的简单文档相似度量来执行法律文件分类为八类。随机步行算法的平均成功率不仅优于模拟退火和遗传算法,还符合支持向量机的准确性。虽然这些方法通常用于在其他领域中选择适当的特征,但它们在文本分类中的使用并不令人满意地研究。而且,对于我们的知识,这是第一个调查其在法律领域使用的工作。通过使用活动学习方法来选择培训样本而不是遵循被动学习方法,可以进一步提高该通用文本分类框架。

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