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- W4251776623 abstract "Free Access Bibliography Samprit Chatterjee, New York University, New York, USASearch for more papers by this authorJeffrey S. Simonoff, New York University, New York, USASearch for more papers by this author Book Author(s):Samprit Chatterjee, New York University, New York, USASearch for more papers by this authorJeffrey S. Simonoff, New York University, New York, USASearch for more papers by this author First published: 01 September 2020 https://doi.org/10.1002/9781119392491.biblioBook Series:Wiley Series in Probability and Statistics AboutPDF ToolsRequest permissionExport citationAdd to favoritesTrack citation ShareShare Give accessShare full text accessShare full-text accessPlease review our Terms and Conditions of Use and check box below to share full-text version of article.I have read and accept the Wiley Online Library Terms and Conditions of UseShareable LinkUse the link below to share a full-text version of this article with your friends and colleagues. Learn more.Copy URL Share a linkShare onEmailFacebookTwitterLinked InRedditWechat References Abzug, R., Simonoff, J.S., and Ahlstrom, D. (2000). Nonprofits as large employers: a city-level geographical inquiry. Nonprofit and Voluntary Sector Quarterly 29: 455– 470. CrossrefWeb of Science®Google Scholar Agresti, A. (2007). 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