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Edward Diener [3]Edward F. Diener [1]
  1. Well-Being: The Foundations of Hedonic Psychology.Daniel Kahneman, Edward Diener & Norbert Schwarz (eds.) - 1999 - Russell Sage Foundation.
    The nature of well-being is one of the most enduring and elusive subjects of human inquiry. Well-Being draws upon the latest scientific research to transform our understanding of this ancient question. With contributions from leading authorities in psychology, social psychology, and neuroscience, this volume presents the definitive account of current scientific efforts to understand human pleasure and pain, contentment and despair. The distinguished contributors to this volume combine a rigorous analysis of human sensations, emotions, and moods with a broad assessment (...)
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  2. In defense of happiness.Pelin Kesebir & Edward Diener - 2008 - In Luigino Bruni, Flavio Comim & Maurizio Pugno (eds.), Capabilities and Happiness. Oxford University Press. pp. 60--80.
     
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    The Ethics of Social Intervention.Harold Orlans, Edward Diener, Rick Crandall, Gordon Bermant, Herbert C. Kelman & Donald P. Warwick - 1979 - Hastings Center Report 9 (3):42.
    Book reviewed in this article: Ethics in Social and Behavioral Research. By Edward Diener and Rick Crandall The Ethics of Social Intervention. Gordon Bermant, Herbert C. Kelman, Donald P. Warwick.
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    From Data to Causes III: Bayesian Priors for General Cross-Lagged Panel Models.Michael J. Zyphur, Ellen L. Hamaker, Louis Tay, Manuel Voelkle, Kristopher J. Preacher, Zhen Zhang, Paul D. Allison, Dean C. Pierides, Peter Koval & Edward F. Diener - 2021 - Frontiers in Psychology 12.
    This article describes some potential uses of Bayesian estimation for time-series and panel data models by incorporating information from prior probabilities in addition to observed data. Drawing on econometrics and other literatures we illustrate the use of informative “shrinkage” or “small variance” priors while extending prior work on the general cross-lagged panel model. Using a panel dataset of national income and subjective well-being we describe three key benefits of these priors. First, they shrink parameter estimates toward zero or toward each (...)
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