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Semi-automatic Codification of Economical Activities with Support Vector Machines

机译:支持向量机的经济活动半自动编纂

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The correct attribution of codes to economical activities is of ultimate importance for fiscal and administrative purposes. In a joint effort involving federal, state and city business regulating offices, the unification and automation of this codification process is in progress. As the input information is in the form of free textual entries, techniques used in multi-class, multi-label text categorization are well suited. Due to the fact that the possible codes are in the order of one thousand, this problem is under investigation through an approach based on a hierarchical use of Support Vector Machines (SVM). The hierarchical organization of several SVMs split the problem into smaller ones and allows a fine tuning of the code attribution obeying the very hierarchy present in the table describing the codes. This paper will introduce the problem, describe the proposed approach based on SVMs and show some results that validate the approach.
机译:对经济活动的正确归属是对财政和行政目的的最重要意义。在涉及联邦,州和城市商业调节办事处的共同努力,本编纂进程的统一和自动化正在进行中。由于输入信息以自由文本条目的形式,在多类中使用的技术,多标签文本分类非常适合。由于可能的代码占一千个,通过基于支持向量机(SVM)的分层使用的方法正在调查该问题。几个SVM的分层组织将问题分成较小的SVM,并允许微调遵守描述代码的表中存在的非常层次的代码归因。本文将介绍该问题,描述了基于SVM的建议方法,并显示了一些验证方法的结果。

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