Manufacturing Sentiment: Forecasting Industrial Production With Text Analysis
利用制造业调查中的自由文本回答,通过深度学习和词典方法构建情绪指数,这些指数能预测美国制造业产出,且最佳表现来自微调深度学习模型。
ABSTRACT This paper leverages free‐form textual responses from a key manufacturing survey to create sentiment indexes that mirror categorical measures from the same survey and also contain predictive content—both in and out‐of‐sample—for manufacturing output. We use textual data from the Institute for Supply Management to compare sentiment metrics based on dictionary and deep learning natural language processing methods. The best performing sentiment measures classify comments based on fine‐tuned deep learning models. To add interpretability, we apply Shapley decompositions to show that a relatively small number of words—associated with very positive and very negative sentiment—account for much of the variation in the aggregate sentiment index.