Ozan Ozyegen, Garima Malik, Mucahit Cevik, Kevin Ioi, Karim El Mokhtari
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引用次数: 0
摘要
公司编制运营报告,以衡量业务绩效并评估实际结果与预测之间的差异。分析师会对这些报告进行评论,以解释偏差的原因。在本文中,我们提出了一个基于机器学习的框架,从公司生成的运营数据中预测评论。我们使用时间序列分类来预测现有评论的标签,并比较了用于预测任务的各种机器学习模型,包括 XGBoost、长短期记忆网络和全卷积网络 (FCN)。我们在三个数据集上对分类模型进行了训练,并根据准确率和 F1 分数对其性能进行了评估。我们将人工智能的可解释性视为我们框架中的一个额外组成部分,以便更好地向决策者解释预测结果。我们的数值研究表明,FCN 架构提供了更高的分类性能,而类激活图和 SHAP 可解释性方法则为模型预测提供了直观的解释。我们发现,基于机器学习方法的拟议框架为利用管理信息系统提供了新的途径,使管理人员能够深入了解包括销售预测和库存管理在内的关键财务问题。
A unified framework for financial commentary prediction
Companies generate operational reports to measure business performance and evaluate discrepancies between actual outcomes and forecasts. Analysts comment on these reports to explain the causes of deviations. In this paper, we propose a machine learning-based framework to predict the commentaries from the operational data generated by a company. We use time series classification to predict labels for the existing commentaries, and compare various machine learning models for the prediction task including XGBoost, long short term memory networks and fully convolutional networks (FCN). Classification models are trained on three datasets and their performance is evaluated in terms of accuracy and F1-score. We consider AI interpretability as an additional component in our framework to better explain the predictions to the decision makers. Our numerical study shows that FCN architecture provides higher classification performance, and Class Activation Maps and SHAP interpretability methods provide intuitive explanations for the model predictions. We find that the proposed framework that is enabled by machine learning-based methods offers new avenues to leverage management information systems for providing insights to the managers on key financial issues including sales forecasting and inventory management.