LGMLMay 20, 2021

Aggregate Learning for Mixed Frequency Data

arXiv:2105.09579v11 citations
Originality Incremental advance
AI Analysis

This work addresses the need for timely economic insights using alternative data, offering a domain-specific tool for economic analysis.

The paper tackles real-time economic analysis by proposing a mixed-frequency aggregate learning model that predicts economic indicators like job applicants for smaller areas, showing it captures regional heterogeneity and rapid changes in economic status.

Large and acute economic shocks such as the 2007-2009 financial crisis and the current COVID-19 infections rapidly change the economic environment. In such a situation, the importance of real-time economic analysis using alternative datais emerging. Alternative data such as search query and location data are closer to real-time and richer than official statistics that are typically released once a month in an aggregated form. We take advantage of spatio-temporal granularity of alternative data and propose a mixed-FrequencyAggregate Learning (MF-AGL)model that predicts economic indicators for the smaller areas in real-time. We apply the model for the real-world problem; prediction of the number of job applicants which is closely related to the unemployment rates. We find that the proposed model predicts (i) the regional heterogeneity of the labor market condition and (ii) the rapidly changing economic status. The model can be applied to various tasks, especially economic analysis

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