Does a company has bright future? Predicting financial risk from revenue reports

B. Qian, Hongfei Li
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引用次数: 1

Abstract

This paper investigates predicting the financial risk of publicly-traded corporations using their revenue reports. Unlike many existing algorithms where a prediction model is learnt using real-valued ground truth risks, we propose to solve the prediction as a learning-to-rank problem with pairwise constraints (e.g., company A is financially more stable than company B). To further increase the flexibility of our approach, we solve the pairwise learning formulation in its dual format, which makes our model nonlinear and thereby can be applied to complex prediction tasks. The advantage of using pairwise supervision is not just limited to the easier acquisition of training data, it also motivates new problem settings. We explore one such setting - the prediction model can actively ask humans informative questions so as to improve the prediction accuracy. Our work aims to address three limitations of existing works: (i) Pointwise supervision - we adopt pairwise supervision which reduces the cost of collecting training samples; (ii) Linearity - we kernelize the formulation to make it nonlinear which would broaden its applicability; (iii) Training data bottleneck - the proposed model can actively involve humans into the learning loop, such that when the initial training samples does not carry enough knowledge, additional examples can be added to learn a better prediction model. Using the proposed efficient optimization method, we evaluate our approach on real text files (annual revenue reports) and compare with state-of-the-art methods. The superior empirical result demonstrates the performance of our proposed approach, and validates the effectiveness of our active knowledge injection in the context of human-machine interaction.
一家公司有光明的未来吗?根据收入报告预测财务风险
本文对利用上市公司收益报告预测上市公司财务风险进行了研究。与许多使用实值基础真值风险学习预测模型的现有算法不同,我们提出将预测作为具有两两约束的学习排序问题来解决(例如,公司a在财务上比公司B更稳定)。为了进一步增加我们方法的灵活性,我们以对偶格式解决两两学习公式,这使得我们的模型非线性,从而可以应用于复杂的预测任务。使用成对监督的优势不仅限于更容易获得训练数据,还可以激发新的问题设置。我们探索了一种这样的设置——预测模型可以主动向人类提问,从而提高预测的准确性。我们的工作旨在解决现有工作的三个局限性:(i)点监督-我们采用两两监督,减少了收集训练样本的成本;(ii)线性-我们将公式核化,使其成为非线性的,这将扩大其适用性;(iii)训练数据瓶颈——所提出的模型可以主动地将人引入到学习循环中,当初始训练样本没有携带足够的知识时,可以添加额外的样本来学习更好的预测模型。使用提出的高效优化方法,我们在真实文本文件(年度收入报告)上评估了我们的方法,并与最先进的方法进行了比较。优异的实证结果证明了我们提出的方法的性能,并验证了我们在人机交互背景下主动知识注入的有效性。
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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