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High Frequency Evidence on the Demand for Gasoline
by
Lewis, Matthew S.
, Levin, Laurence
, Wolak, Frank A.
in
Aggregate data
/ Commodities trading
/ Economic models
/ Elasticity of demand
/ Expenditures
/ Gasoline
/ Price elasticity
/ Prices
/ Responsiveness
2017
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Do you wish to request the book?
High Frequency Evidence on the Demand for Gasoline
by
Lewis, Matthew S.
, Levin, Laurence
, Wolak, Frank A.
in
Aggregate data
/ Commodities trading
/ Economic models
/ Elasticity of demand
/ Expenditures
/ Gasoline
/ Price elasticity
/ Prices
/ Responsiveness
2017
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Journal Article
High Frequency Evidence on the Demand for Gasoline
2017
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Overview
Daily city-level expenditures and prices are used to estimate the price responsiveness of gasoline demand in the United States. Using a frequency of purchase model that explicitly acknowledges the distinction between gasoline demand and gasoline expenditures, the price elasticity of demand is consistently found to be an order of magnitude larger than estimates from recent studies using more aggregated data. Estimating demand using higher levels of spatial and temporal aggregation is shown to produce increasingly inelastic estimates. A decomposition is then developed and implemented to understand the relative importance of several different factors in explaining this result.
Publisher
American Economic Association,AEA
Subject
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