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Accounting for stochastic shadow values of time in discrete-choice recreation demand models [An article from: Journal of Environmental Economics and Management]

Accounting for stochastic shadow values of time in discrete-choice recreation demand models [An article from: Journal of Environmental Economics and Management]

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Authors: D.k. Lew, D.m. Larson
Publisher: Elsevier
Category: Book

Buy New: $8.95




Format: Html
Media: Digital

ASIN: B000RR5FRY

Availability: Available for download now

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Product Description
This digital document is a journal article from Journal of Environmental Economics and Management, published by Elsevier in . The article is delivered in HTML format and is available in your Amazon.com Media Library immediately after purchase. You can view it with any web browser.

Description:
In this paper, a discrete-choice recreation demand model that explicitly accounts for a stochastic shadow value of time function is proposed. Using data from a survey of San Diego beach users, the stochastic shadow value of time, labor supply, and beach choice are jointly estimated. Results from this joint estimation approach are compared with the familiar two-step approach that estimates labor supply first and uses predicted values of time in the recreational site choice model. The approaches produce markedly different welfare measures, with the two-step model, which does not account for unobserved variability of time values, predicting significantly higher values. A Monte Carlo simulation illustrates how ignoring the stochastic nature of shadow value of time in discrete-choice recreation demand models can bias model parameters, and hence, welfare estimates.


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