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Ensemble boosted trees with synthetic features generation in application to bankruptcy prediction

机译:集成具有合成特征的增强树在破产预测中的应用

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Bankruptcy prediction has been a subject of interests for almost a century and it still ranks high among hottest topics in economics. The aim of predicting financial distress is to develop a predictive model that combines various econometric measures and allows to foresee a financial condition of a firm. In this domain various methods were proposed that were based on statistical hypothesis testing, statistical modeling (e.g., generalized linear models), and recently artificial intelligence (e.g., neural networks, Support Vector Machines, decision tress). In this paper, we propose a novel approach for bankruptcy prediction that utilizes Extreme Gradient Boosting for learning an ensemble of decision trees. Additionally, in order to reflect higher-order statistics in data and impose a prior knowledge about data representation, we introduce a new concept that we refer as to synthetic features. A synthetic feature is a combination of the econometric measures using arithmetic operations (addition, subtraction, multiplication, division). Each synthetic feature can be seen as a single regression model that is developed in an evolutionary manner. We evaluate our solution using the collected data about Polish companies in five tasks corresponding to the bankruptcy prediction in the 1st, 2nd, 3rd, 4th, and 5th year. We compare our approach with the reference methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:破产预测一直是近一个世纪以来引起人们关注的主题,并且在经济学中最热门的话题中仍然排名很高。预测财务困境的目的是开发一种预测模型,该模型结合了各种计量经济指标,并可以预见企业的财务状况。在该领域中,提出了各种基于统计假设检验,统计建模(例如,广义线性模型)和最近的人工智能(例如,神经网络,支持向量机,决策树)的方法。在本文中,我们提出了一种新颖的破产预测方法,该方法利用极端梯度增强来学习决策树的合奏。此外,为了反映数据中的高阶统计量并施加有关数据表示的先验知识,我们引入了一个新概念,即合成特征。综合特征是使用算术运算(加法,减法,乘法,除法)的计量经济度量的组合。每个综合特征都可以视为以进化方式开发的单个回归模型。我们使用收集的有关波兰公司的数据评估我们的解决方案,这些数据分别与第一,第二,第三,第四和第五年的破产预测相对应。我们将我们的方法与参考方法进行比较。 (C)2016 Elsevier Ltd.保留所有权利。

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