预测和分析通货膨胀率的预测因素:使用机器学习方法

IF 0.7 Q3 ECONOMICS
Pijush Kanti Das, Prabir Kumar Das
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引用次数: 0

摘要

在本研究中,我们研究并应用了机器学习(ML)范式的模型来预测通货膨胀率。确定的模型包括脊、套索、弹性网、随机森林和人工神经网络。我们使用从 2012 年 1 月至 2022 年 12 月的 132 个月观测数据集进行分析,该数据集包含 56 个特征。与其他 ML 模型相比,随机森林(RF)模型能更准确地预测通货膨胀率。与自回归综合移动平均线等基准计量经济学模型的比较表明,随机森林模型的性能更优越。此外,非线性 ML 模型被证明比线性 ML 或时间序列模型更成功,这主要是由于变量的不可预测性和相互作用。这表明,非线性结构对预测通货膨胀具有重要意义。此外,由于 COVID-19 的影响,ML 模型在预测起伏方面优于基准计量经济学模型。本研究的结果支持应用 ML 模型预测通货膨胀率的益处。即使不考虑大流行病的偶发性,人工神经网络(ANN)等非线性模型也优于其他模型。此外,RF 和 ANN 等多重线性模型还能得出每个解释变量的变量重要性度量。多重线性模型不仅能更好地进行预测,还能提供有关协变量的洞察力,以改进预测结果和政策处方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Forecasting and Analyzing Predictors of Inflation Rate: Using Machine Learning Approach

Forecasting and Analyzing Predictors of Inflation Rate: Using Machine Learning Approach

In this study, we investigate and apply the models from the machine learning (ML) paradigm to forecast the inflation rate. The models identified are ridge, lasso, elastic net, random forest, and artificial neural network. We carry out the analysis using a data set with 56 features of 132 monthly observations from January 2012 to December 2022. The random forest (RF) model can forecast the inflation rate with greater accuracy than other ML models. A comparison to benchmark econometric models like auto-regressive integrated moving average demonstrates the superior performance of the RF model. Moreover, nonlinear ML models are proven to be more successful than a linear ML or time series models and this is mostly due to the unpredictability and interactions of variables. It indicates that the significance of nonlinear structures for forecasting inflation is important. Furthermore, the ML models outweigh the benchmark econometric model in forecasting the undulations due to the COVID-19 impact. The findings in this study support the benefit of applying ML models to forecast the inflation rate. Even without considering the sporadicity of pandemic, nonlinear model like artificial neural network (ANN) outweighs other models. Additionally, the ML models like RF and ANN model yield variable importance measures for each explanatory variable. ML models shows capability to not only better forecasting but also able to provide the insight regarding the covariates for improved forecasting results and policy prescriptions.

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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
0
期刊介绍: The Journal of Quantitative Economics (JQEC) is a refereed journal of the Indian Econometric Society (TIES). It solicits quantitative papers with basic or applied research orientation in all sub-fields of Economics that employ rigorous theoretical, empirical and experimental methods. The Journal also encourages Short Papers and Review Articles. Innovative and fundamental papers that focus on various facets of Economics of the Emerging Market and Developing Economies are particularly welcome. With the help of an international Editorial board and carefully selected referees, it aims to minimize the time taken to complete the review process while preserving the quality of the articles published.
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