学习用年度报告对公司进行排名

Xin Ying Qiu
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引用次数: 0

摘要

事实证明,公司年报的文本内容包含对公司未来业绩的预测指标。本文解决了评估应用机器学习和文本挖掘技术构建年度报告预测模型的有效性的一般研究问题。更具体地说,我们关注这两个问题:1)排名算法的优势是否有助于在年报中实现更好的预测性能?2)我们能否整合元语义特征来帮助支持我们的预测?我们比较了用不同排序算法和文档模型构建的模型。我们用模拟的投资组合来评估我们的模型。我们的结果显示,随着排名阈值的增加,5年的平均回报率显著为正,呈幂律趋势。向文档模型添加元特性已被证明可以提高排名性能。SVR和元增强模型优于其他模型,并为解释预测背后的文本因素提供了潜力。
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Learning to rank firms with annual reports
The textual content of company annual reports has proven to contain predictive indicators for the company future performance. This paper addresses the general research question of evaluating the effectiveness of applying machine learning and text mining techniques to building predictive models with annual reports. More specifically, we focus on these two questions: 1) can the advantages of the ranking algorithm help achieve better predictive performance with annual reports? and 2) can we integrate meta semantic features to help support our prediction? We compare models built with different ranking algorithms and document models. We evaluate our models with a simulated investment portfolio. Our results show significantly positive average returns over 5 years with a power law trend as we increase the ranking threshold. Adding meta features to document model has shown to improve ranking performance. The SVR & Meta-augemented model outperforms the others and provides potential for explaining the textual factors behind the prediction.
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