利用支付跟踪意大利经济活动:意大利银行的经验

Valentina Aprigliano, Guerino Ardizzi, Alessia Cassetta, Alessandro Cavallero, Simone Emiliozzi, Alessandro Gambini, R. Zizza, Nazzareno Renzi
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引用次数: 0

摘要

本文概述了意大利银行工作人员最近如何利用支付信息来跟踪经济活动和预测。特别是,用于这项工作的支付数据来自意大利银行管理的支付系统(BI-COMP和TARGET2),以及银行和意大利邮政向意大利银行金融情报部门提交的反洗钱汇总报告(unitedi Informazione Finanziaria, UIF)。我们表明,从这些来源提取的指标可以提高预测的准确性;特别是,事实证明,在大流行期间,那些频率较高的数据对于正确评估经济状况至关重要。此外,这些指标使评估代理人行为的变化成为可能,特别是在支付习惯方面,并且由于它们的粒度,可以更深入地研究宏观经济趋势,探索行业和地理的异质性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Payments to Track Italian Economic Activity: The Experience at Banca D’Italia
This paper provides an overview of how information on payments has been recently exploited by Banca d’Italia staff for the purposes of tracking economic activity and forecasting. In particular, the payment data used for this work are drawn from the payment systems managed by Banca d’Italia (BI-COMP and TARGET2) and from the Anti-Money Laundering Aggregate Reports submitted by banks and by Poste Italiane to the Banca d’Italia’s Financial Intelligence Unit (Unità di Informazione Finanziaria, UIF). We show that indicators drawn from these sources can improve forecasting accuracy; in particular, those available at a higher frequency have proved crucial to properly assessing the state of the economy during the pandemic. Moreover, these indicators make it possible to assess changes in agents’ behaviour, notably with reference to payment habits, and, thanks to their granularity, to delve deeper into the macroeconomic trends, exploring heterogeneity by sector and geography.
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