组织调查中的事后分层加权:跨学科教程

Post‐Stratification Weighting in Organizational Surveys: A Cross‐Disciplinary Tutorial

HUMAN RESOURCE MANAGEMENT · 2018
被引 25
人大 AFT50ABS 4

中文导读

为组织调查者提供事后分层加权的教程,解释加权理由、方法及标准误校正,帮助减少样本与总体的偏差,并附有数据和操作示例。

Abstract

Post‐stratification weighting is a technique used in public opinion polling to minimize discrepancies between population parameters and realized sample characteristics. The current paper provides a weighting tutorial to organizational surveyors who may otherwise be unfamiliar with the rationale behind the practice as well as “when and how to do” such weighting. The primary reasons to weight include: [1] reducing the effect of frame, sampling, and nonresponse bias in point estimates, and, relatedly, (2) correcting for aggregation error resulting from over‐ and underrepresentation of constituent groups. We briefly compare and contrast traditions within public opinion and organizational polling contexts and present a hybrid taxonomy of sampling procedures that organizational surveyors may find useful in situating their survey efforts within a methodological framework. Next, we extend the existing HRM literature focused on survey nonresponse to a broader lens concerned with population misrepresentation. It is from this broadened methodological framework that we introduce the practice of weighting as a remedial strategy for misrepresentation. We then provide sample weighting algorithms and standard error corrections that can be applied to organizational survey data and make our data and procedures available to individuals who may wish to use our examples as they learn “how to weight.” © 2018 Wiley ­Periodicals, Inc.

组织调查调查方法加权技术统计调整