A Distributional Cost‐of‐Living Index From Aggregate Data
提出一种仅用加总价格、支出份额和一次截面支出分布数据,就能构建非齐次偏好下个体和加总生活成本指数的方法,并发现美国最穷与最富10%人群的年通胀率长期相差0.41个百分点,2022年差距达1.3个百分点。
ABSTRACT This article proposes a method to measure individual and aggregate changes in the cost of living when consumer behavior is nonhomothetic and microdata on consumption expenditures are not available. Aggregate prices and expenditure shares together with a single cross‐sectional expenditure distribution are sufficient to create a distribution of nonhomothetic cost‐of‐living indices. The cost‐of‐living indices nest the homothetic Törnqvist price index as a limit case and only contain one unknown parameter, which is identified from macro data without aggregation bias. Using US Personal Consumption Expenditure (PCE) data, we construct nonhomothetic PCE price indices covering 71 product groups for the period 1959 to 2023. These indices reveal a 0.41 percentage point gap in annual inflation rates between the poorest and richest ten percent since 1959 and a 1.3 percentage point gap throughout 2022, thus suggesting that poorer households are hit harder both in the long run and in the recent inflation surge.