Addressing Onsite Sampling in Recreation Site Choice Models

Paul R. Hindsley, C. Landry, B. Gentner
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引用次数: 60

Abstract

Independent experts and politicians have criticized statistical analyses of recreation behavior, which rely upon onsite samples due to their potential for biased inference. The use of onsite sampling usually reflects data or budgetary constraints, but can lead to two primary forms of bias in site choice models. First, the strategy entails sampling site choices rather than sampling individuals--a form of bias called endogenous stratification. Under these conditions, sample choices may not reflect the site choices of the true population. Second, exogenous attributes of the individuals sampled onsite may differ from the attributes of individuals in the population--the most common form in recreation demand is avidity bias. We propose addressing these biases by combining two the existing methods: Weighted Exogenous Stratification Maximum Likelihood estimation and propensity score estimation. We use the National Marine Fisheries Service's Marine Recreational Fishing Statistics Survey to illustrate methods of bias reduction, employing both simulated and empirical applications. We find that propensity score based weights can significantly reduce bias in estimation. Our results indicate that failure to account for these biases can overstate anglers' willingness to pay for improvements in fishing catch, but weighted models exhibit higher variance of parameter estimates and willingness to pay.
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解决娱乐场所选择模型中的现场抽样问题
独立专家和政治家批评了娱乐行为的统计分析,这些分析依赖于现场样本,因为它们有可能产生有偏见的推断。现场抽样的使用通常反映了数据或预算限制,但可能导致选址模型中的两种主要形式的偏差。首先,该策略需要抽样地点的选择,而不是抽样个人——一种被称为内生分层的偏见形式。在这种情况下,样本选择可能不能反映真实总体的地点选择。其次,现场采样个体的外生属性可能与种群中个体的属性不同——娱乐需求中最常见的形式是贪婪偏差。我们建议通过结合两种现有方法来解决这些偏差:加权外生分层最大似然估计和倾向评分估计。我们使用国家海洋渔业局的海洋休闲捕鱼统计调查来说明减少偏差的方法,采用模拟和实证应用。我们发现基于倾向得分的权重可以显著减少估计中的偏差。我们的研究结果表明,不考虑这些偏差可能会夸大钓鱼者为改善渔获量而支付的意愿,但加权模型在参数估计和支付意愿方面表现出更高的方差。
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