Institutional Sector Cassifier, a Machine Learning Approach

Paolo Massaro, I. Vannini, O. Giudice
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引用次数: 3

Abstract

We implement machine learning techniques to obtain an automatic classification by sector of economic activity of the Italian companies recorded in the Bank of Italy Entities Register. To this end, first we extract a sample of correctly classified corporations from the universe of Italian companies. Second, we select a set of features that are related to the sector of economic activity code and use these to implement supervised approaches to infer output predictions. We choose a multi-step approach based on the hierarchical structure of the sector classification. Because of the imbalance in the target classes, at each step, we first apply two resampling procedures – random oversampling and the Synthetic Minority Over-sampling Technique – to get a more balanced training set. Then, we fit Gradient Boosting and Support Vector Machine models. Overall, the performance of our multi-step classifier yields very reliable predictions of the sector code. This approach can be employed to make the whole classification process more efficient by reducing the area of manual intervention.
机构部门分类器,一种机器学习方法
我们实施机器学习技术,根据意大利银行实体登记册中记录的意大利公司的经济活动部门获得自动分类。为此,我们首先从意大利公司中抽取一个正确分类的公司样本。其次,我们选择了一组与经济活动代码部门相关的特征,并使用这些特征来实施监督方法来推断产出预测。我们选择了基于部门分类层次结构的多步骤方法。由于目标类的不平衡,在每一步中,我们首先采用随机过采样和合成少数派过采样两种重采样方法来获得更平衡的训练集。然后,我们拟合梯度增强和支持向量机模型。总的来说,我们的多步分类器的性能产生了非常可靠的扇区代码预测。这种方法可以通过减少人工干预的面积来提高整个分类过程的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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