非结构化信息的量化及其在预测建模中的应用

P. Dumrong, J. Gould, G. Lee, L. Nicholson, K. Gao, P. Beling, M. Blume, J. Robinson
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引用次数: 1

摘要

当试图从文档中提取有价值的信息时,管理基于文本的信息至关重要。为基于文本的(非结构化)信息分配数值是提取值的方法之一。本文研究了非结构化文本的量化及其预测能力。为了检查与预测模型相关的非结构化信息,褐皮书被用来调查和预测美国经济的变化。黄皮书描述了当前的经济状况,并讨论了实际国内生产总值(GDP)的波动。为了量化基于文本的非结构化信息,提出了直接评分算法(DSA)。它利用文档中的关键词及其主观确定的数值权重对单个句子进行评分。然后进行统计分析,以验证褐皮书的哪些部分对GDP的预测贡献了最重要的信息。利用显著部分,构建了预测未来GDP增长的线性回归模型。将DSA模型的调整后的r /sup /值与经济专家对同一文件的评分进行比较。比较表明,使用褐皮书的DSA模型对GDP的预测有显著贡献,并且与经济专家创建的分数相比,它解释了相似数量的方差。同时,将结构化预测模型与DSA模型进行了比较,再次证明了基于文本信息的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The quantification of unstructured information and its use in predictive modeling
Managing text-based information is crucial when trying to extract valuable information from documents. Assigning a numerical value to the text-based (unstructured) information is one of the ways to extract value. This research studied the quantification of unstructured text and its forecasting power. In order to examine unstructured information that related to predictive models, the Beige books were utilized to investigate and predict changes in the U.S. economy. The Beige books describe current economic conditions and discuss fluctuations in real gross domestic product (GDP). To quantify the text-based unstructured information, the direct scoring algorithm (DSA) was proposed. It utilized the keywords in the document and their subjectively-determined numerical weights to score individual sentence. Statistical analyses were then conducted to verify which sections of the Beige books contributed the most significant information to the prediction of GDP. Utilizing the significant sections, a linear regression model was constructed to predict future GDP growth. The adjusted-R/sup 2/ values of the DSA model were compared to the scoring of the same documents by an economic expert. The comparison demonstrated that the DSA model using the Beige book significantly contributed to the prediction of GDP, and it explained similar amounts of variance compared to the scores created by an economic expert. Also, a comparison between a structured predictive model and the DSA model was conducted to again prove the significance of text-based information.
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