A classification framework of issuers in the Moroccan financial market

A. Abdelli, L. Benabbou, Z. Dahani, K. Dalli, A. Berrado
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Abstract

The Moroccan financial system has undergone major changes since the early 90s. The financial market authority makes available a multitude of public information and statistics on the financial operations of the issuers. Other than the classification by sector or by type and / or amount of the issue, there is no classification model to predict the behavior of an issuer based on financial indicators. In this context, this work aims to develop an actionable classification scheme to explain and predict the behavior of issuers in the Moroccan financial market. A database of financial operations of various issuers between 1995 and 2011 was built. Thereafter, classes of these issuers were constructed via unsupervised learning techniques. Clustering of time series of issuers and their corresponding amounts reported by year, allowed for finely learning and defining classes of issuers, taking into account the temporal dimension. Based on the clusters from the first step, a supervised tree based classification model was developed to predict the class of new issuers on the Moroccan financial market.
摩洛哥金融市场发行人的分类框架
自上世纪90年代初以来,摩洛哥的金融体系经历了重大变革。金融市场管理局提供大量关于发行人金融运作的公开信息和统计数据。除了按行业或按发行类型和/或金额分类外,没有基于财务指标预测发行人行为的分类模型。在这种情况下,这项工作旨在制定一个可操作的分类方案,以解释和预测摩洛哥金融市场发行人的行为。建立了1995年至2011年各发行人财务运作数据库。然后,通过无监督学习技术构建这些发行者的类。将发行人的时间序列及其按年报告的相应金额进行聚类,考虑到时间维度,可以精细地学习和定义发行人的类别。基于第一步的聚类,开发了一种基于监督树的分类模型来预测摩洛哥金融市场上新发行人的类别。
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