Rethinking some of the rethinking of partial least squares
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[1] Galit Shmueli,et al. To Explain or To Predict? , 2010, 1101.0891.
[2] José L. Roldán,et al. European management research using partial least squares structural equation modeling (PLS-SEM) , 2015 .
[3] Marko Sarstedt,et al. Editorial - Partial Least Squares Structural Equation Modeling: Rigorous Applications, Better Results and Higher Acceptance , 2013 .
[4] Philippe Jacquart,et al. On making causal claims: A review and recommendations , 2010 .
[5] T. Dijkstra. Some comments on maximum likelihood and partial least squares methods , 1983 .
[6] Christian Nitzl,et al. Mediation Analysis in Partial Least Squares Path Modeling: Helping Researchers Discuss More Sophisticated Models , 2016, Ind. Manag. Data Syst..
[7] Sungho Park,et al. Handling Endogenous Regressors by Joint Estimation Using Copulas , 2012, Mark. Sci..
[8] Kenneth A. Bollen,et al. Structural Equations with Latent Variables , 1989 .
[9] Jörg Henseler,et al. Consistent Partial Least Squares Path Modeling , 2015, MIS Q..
[10] Wynne W. Chin,et al. Structural equation modeling analysis with small samples using partial least squares , 1999 .
[11] Wynne W. Chin,et al. You Write, but Others Read: Common Methodological Misunderstandings in PLS and Related Methods , 2013 .
[12] Marko Sarstedt,et al. Mirror, mirror on the wall: a comparative evaluation of composite-based structural equation modeling methods , 2017, Journal of the Academy of Marketing Science.
[13] Detmar W. Straub,et al. Common Beliefs and Reality About PLS , 2014 .
[14] Wen-Lung Shiau,et al. Methodological research on partial least squares structural equation modeling (PLS-SEM) , 2019, Internet Res..
[15] Galit Shmueli,et al. The elephant in the room: Predictive performance of PLS models , 2016 .
[16] R. P. McDonald,et al. Path Analysis with Composite Variables. , 1996, Multivariate behavioral research.
[17] Edward E. Rigdon,et al. Choosing PLS path modeling as analytical method in European management research: A realist perspective , 2016 .
[18] Detmar W. Straub,et al. An Update and Extension to SEM Guidelines for Admnistrative and Social Science Research , 2011 .
[19] Edward E. Rigdon,et al. On Comparing Results from CB-SEM and PLS-SEM: Five Perspectives and Five Recommendations , 2017 .
[20] Katherine E. Masyn,et al. Latent Class Analysis and Finite Mixture Modeling , 2013 .
[21] Adamantios Diamantopoulos,et al. Specifying Formatively-Measured Constructs in Endogenous Positions in Structural Equation Models: Caveats and Guidelines for Researchers , 2014 .
[22] A. Hayes. Introduction to Mediation, Moderation, and Conditional Process Analysis: A Regression-Based Approach , 2013 .
[23] Joseph F. Hair,et al. When to use and how to report the results of PLS-SEM , 2019, European Business Review.
[24] H. Ting,et al. MODERATION ANALYSIS: ISSUES AND GUIDELINES , 2019, Journal of Applied Structural Equation Modeling.
[25] J. Henseler. Bridging Design and Behavioral Research With Variance-Based Structural Equation Modeling , 2017 .
[26] Marko Sarstedt,et al. Partial least squares structural equation modeling (PLS-SEM): An emerging tool in business research , 2014 .
[27] Kenneth A. Bollen,et al. Representing general theoretical concepts in structural equation models: the role of composite variables , 2008, Environmental and Ecological Statistics.
[28] Peter Ebbes,et al. Addressing Endogeneity in Marketing Models , 2017 .
[29] Nick Lee,et al. Problems with formative and higher-order reflective variables , 2013 .
[30] Jörg Henseler,et al. Testing Moderating Effects in PLS Path Models. An Illustration of Available Procedures , 2005 .
[31] S. Gudergan,et al. Partial least squares structural equation modeling in HRM research , 2020 .
[32] C. Fornell,et al. Evaluating structural equation models with unobservable variables and measurement error. , 1981 .
[33] Geoffrey S. Hubona,et al. Using PLS path modeling in new technology research: updated guidelines , 2016, Ind. Manag. Data Syst..
[34] Jörg Henseler,et al. Testing moderating effects in PLS path models with composite variables , 2016, Ind. Manag. Data Syst..
[35] Guangping Wang,et al. The effects of job autonomy, customer demandingness, and trait competitiveness on salesperson learning, self-efficacy, and performance , 2002 .
[36] Jörg Henseler,et al. Chapter 2 New Guidelines for the Use of PLS Path Modeling in Hospitality, Travel, and Tourism Research , 2018, Applying Partial Least Squares in Tourism and Hospitality Research.
[37] Mikko Rönkkö,et al. A Critical Examination of Common Beliefs About Partial Least Squares Path Modeling , 2013 .
[38] Geoffrey S. Hubona,et al. Partial least squares path modeling : Updated guidelines , 2017 .
[39] John R. Rossiter,et al. How to use C-OAR-SE to design optimal standard measures , 2016 .
[40] Tom L. Roberts,et al. Multiple Indicators and Multiple Causes (MIMIC) Models as a Mixed-Modelling Technique: A Tutorial and an Annotated Example , 2014, Commun. Assoc. Inf. Syst..
[41] Pratyush Nidhi Sharma,et al. Prediction-Oriented Model Selection in Partial Least Squares Path Modeling , 2018, Decis. Sci..
[42] Marko Sarstedt,et al. Addressing Endogeneity in International Marketing Applications of Partial Least Squares Structural Equation Modeling , 2018, Journal of International Marketing.
[43] Gautam Ray,et al. Impact of Information Technology Infrastructure Flexibility on Mergers and Acquisitions , 2018, MIS Q..
[44] Joseph F. Hair,et al. Estimation issues with PLS and CBSEM: Where the bias lies! ☆ , 2016 .
[45] Martin Wetzels,et al. Hierarchical latent variable models in PLS-SEM: guidelines for using reflective-formative type models , 2012 .
[46] Bengt Muthén,et al. Latent variable modeling in heterogeneous populations , 1989 .
[47] Jeffrey R. Edwards,et al. Reflections on Partial Least Squares Path Modeling , 2014 .
[48] Marko Sarstedt,et al. Heuristics versus statistics in discriminant validity testing: a comparison of four procedures , 2019, Internet Res..
[49] M. Sarstedt,et al. ESTIMATING MODERATING EFFECTS IN PLS-SEM AND PLSc-SEM: INTERACTION TERM GENERATION*DATA TREATMENT , 2018, Journal of Applied Structural Equation Modeling.
[50] Deborah L. Bandalos,et al. Four Common Misconceptions in Exploratory Factor Analysis , 2008 .
[51] George M. Marakas,et al. Research Note - Partial Least Squares and Models with Formatively Specified Endogenous Constructs: A Cautionary Note , 2014, Inf. Syst. Res..
[52] Wynne W. Chin. How to Write Up and Report PLS Analyses , 2010 .
[53] Frank Huber,et al. Capturing Customer Heterogeneity using a Finite Mixture PLS Approach , 2002 .
[54] Edward E. Rigdon,et al. Rethinking Partial Least Squares Path Modeling: In Praise of Simple Methods , 2012 .
[55] Marko Sarstedt,et al. Segmentation of PLS path models by iterative reweighted regressions , 2015 .
[56] Detmar W. Straub,et al. Conflating Antecedents and Formative Indicators: A Comment on Aguirre-Urreta and Marakas , 2014, Inf. Syst. Res..
[57] J. Henseler. Partial least squares path modeling: Quo vadis? , 2018, Quality & Quantity.
[58] Sandra Streukens,et al. Bootstrapping and PLS-SEM: A step-by-step guide to get more out of your bootstrap results , 2016 .
[59] K. Popper,et al. Conjectures and refutations;: The growth of scientific knowledge , 1972 .
[60] A. Diamantopoulos,et al. Using Formative Measures in International Marketing Models: A Cautionary Tale Using Consumer Animosity as an Example , 2011 .
[61] Wynne W. Chin,et al. When Imprecise Statistical Statements Become Problematic: A Response to Goodhue, Lewis, and Thompson , 2012, MIS Q..
[62] Carlo Lauro,et al. Predictive Path Modeling Through PLS and Other Component-Based Approaches: Methodological Issues and Performance Evaluation , 2017 .
[63] Marko Sarstedt,et al. PLS-SEM: Indeed a Silver Bullet , 2011 .
[64] James C. Anderson,et al. STRUCTURAL EQUATION MODELING IN PRACTICE: A REVIEW AND RECOMMENDED TWO-STEP APPROACH , 1988 .
[65] Edward E. Rigdon,et al. Rethinking Partial Least Squares Path Modeling: Breaking Chains and Forging Ahead , 2014 .
[66] William Lewis,et al. Does PLS Have Advantages for Small Sample Size or Non-Normal Data? , 2012, MIS Q..
[67] Marko Sarstedt,et al. Treating Unobserved Heterogeneity in PLS-SEM: A Multi-method Approach , 2017 .
[68] Nick Lee,et al. Reflections on a decade of EJM and marketing scholarship: the good, the bad, and the future , 2017 .
[69] Robert A. Forsyth,et al. An Investigation of Empirical Sampling Distributions of Correlation Coefficients Corrected for Attenuation , 1969 .
[70] Mary Tate,et al. Assessing the predictive performance of structural equation model estimators , 2016 .
[71] Peter Ebbes,et al. The Sense and Non-Sense of Holdout Sample Validation in the Presence of Endogeneity , 2010, Mark. Sci..
[72] John Geweke,et al. Estimating regression models of finite but unknown order , 1981 .
[73] Quinn McNemar,et al. Attenuation and interaction , 1958 .
[74] Galit Shmueli,et al. Predictive Analytics in Information Systems Research , 2010, MIS Q..
[75] Hengky Latan,et al. Chapter 4 PLS Path Modeling in Hospitality and Tourism Research: The Golden Age and Days of Future Past , 2018, Applying Partial Least Squares in Tourism and Hospitality Research.
[76] George M. Marakas,et al. Omission of Causal Indicators: Consequences and Implications for Measurement , 2016 .
[77] Arun Rai,et al. Discovering Unobserved Heterogeneity in Structural Equation Models to Avert Validity Threats , 2013, MIS Q..
[78] D. A. Kenny,et al. The moderator-mediator variable distinction in social psychological research: conceptual, strategic, and statistical considerations. , 1986, Journal of personality and social psychology.
[79] Lutz Kaufmann,et al. A structured review of partial least squares in supply chain management research , 2015 .
[80] Florian Schuberth,et al. PLS path modeling – a confirmatory approach to study tourism technology and tourist behavior , 2018, Journal of Hospitality and Tourism Technology.
[81] Manuel J. Sánchez-Franco,et al. Variance-Based Structural Equation Modeling: Guidelines for Using Partial Least Squares in Information Systems Research , 2012 .
[82] Jeffrey M. Wooldridge,et al. Solutions Manual and Supplementary Materials for Econometric Analysis of Cross Section and Panel Data , 2003 .
[83] Hans Baumgartner,et al. On the use of structural equation models for marketing modeling , 2000 .
[84] Michel Tenenhaus,et al. PLS path modeling , 2005, Comput. Stat. Data Anal..
[85] Gaby Odekerken-Schröder,et al. Using PLS path modeling for assessing hierarchial construct models: guidelines and impirical illustration , 2009 .
[86] C. Jabbour,et al. Ethical awareness, ethical judgment, andwhistleblowing: A moderated mediation analysis , 2017 .
[87] Kristopher J Preacher,et al. Asymptotic and resampling strategies for assessing and comparing indirect effects in multiple mediator models , 2008, Behavior research methods.
[88] Jörg Henseler,et al. Consistent and asymptotically normal PLS estimators for linear structural equations , 2014 .
[89] Christian Nitzl,et al. The use of partial least squares structural equation modelling (PLS-SEM) in management accounting research: Directions for future theory development , 2016 .
[90] Jan-Bernd Lohmöller,et al. Latent Variable Path Modeling with Partial Least Squares , 1989 .
[91] Shirley Gregor,et al. The Nature of Theory in Information Systems , 2006, MIS Q..
[92] A. Kaplan,et al. A Beginner's Guide to Partial Least Squares Analysis , 2004 .
[93] Wynne W. Chin,et al. The case of partial least squares (PLS) path modeling in managerial accounting research , 2017 .
[94] Marko Sarstedt,et al. An assessment of the use of partial least squares structural equation modeling in marketing research , 2012 .
[95] G. Schwarz. Estimating the Dimension of a Model , 1978 .
[96] Marko Sarstedt,et al. Genetic algorithm segmentation in partial least squares structural equation modeling , 2013, OR Spectrum.
[97] M. Sarstedt,et al. Uncovering and Treating Unobserved Heterogeneity with FIMIX-PLS: Which Model Selection Criterion Provides an Appropriate Number of Segments? , 2011 .
[98] W. DeSarbo,et al. Finite-Mixture Structural Equation Models for Response-Based Segmentation and Unobserved Heterogeneity , 1997 .
[99] I. J. Myung,et al. When a good fit can be bad , 2002, Trends in Cognitive Sciences.
[100] A. Goldberger,et al. Estimation of a Model with Multiple Indicators and Multiple Causes of a Single Latent Variable , 1975 .
[101] John R. Rossiter,et al. Marketing measurement revolution: the C-OAR-SE method and why it must replace psychometrics , 2011 .
[102] W. Reinartz,et al. An Empirical Comparison of the Efficacy of Covariance-Based and Variance-Based SEM , 2009 .
[103] Steven M. Shugan. Commentary - Relevancy Is Robust Prediction, Not Alleged Realism , 2009, Mark. Sci..
[104] Pratyush Nidhi Sharma,et al. PLS-Based Model Selection: The Role of Alternative Explanations in Information Systems Research , 2019, J. Assoc. Inf. Syst..
[105] Arun Rai,et al. Predictive Validity and Formative Measurement in Structural Equation Modeling: Embracing Practical Relevance , 2013, ICIS.
[106] Frederic M. Lord,et al. Estimation of latent ability and item parameters when there are omitted responses , 1974 .
[107] R. Frank Falk,et al. A Primer for Soft Modeling , 1992 .
[108] C. Saunders,et al. Editor's comments: PLS: a silver bullet? , 2006 .
[109] Thurasamy Ramayah,et al. Convergent validity assessment of formatively measured constructs in PLS-SEM , 2018, International Journal of Contemporary Hospitality Management.
[110] Guy Assaker,et al. Using Partial Least Squares Structural Equation Modeling in Tourism Research , 2016 .
[111] Andrew M. Farrell,et al. Insufficient Discriminant Validity: A Comment on Bove, Pervan, Beatty and Shiu (2009) , 2008 .
[112] M. Sarstedt,et al. A new criterion for assessing discriminant validity in variance-based structural equation modeling , 2015 .
[113] Faizan Ali,et al. An Assessment of the Use of Partial Least Squares Structural Equation Modeling (PLS-SEM) in Hospitality Research , 2017 .
[114] Adamantios Diamantopoulos,et al. Advancing formative measurement models , 2008 .
[115] Straub,et al. Editor's Comments: An Update and Extension to SEM Guidelines for Administrative and Social Science Research , 2011 .
[116] Ming-Mei Wang,et al. Some new results on factor indeterminacy , 1972 .
[117] Wynne W. Chin,et al. A Partial Least Squares Latent Variable Modeling Approach for Measuring Interaction Effects: Results from a Monte Carlo Simulation Study and an Electronic - Mail Emotion/Adoption Study , 2003, Inf. Syst. Res..
[118] Joseph F. Hair,et al. Partial Least Squares Structural Equation Modeling , 2021, Handbook of Market Research.
[119] Jose Benitez-Amado,et al. How to Address Endogeneity in Partial Least Squares Path Modeling , 2016, AMCIS.
[120] Nils M. Høgevold,et al. Framing the triple bottom line approach: Direct and mediation effects between economic, social and environmental elements , 2018, Journal of Cleaner Production.
[121] C. Lance. Residual Centering, Exploratory and Confirmatory Moderator Analysis, and Decomposition of Effects in Path Models Containing Interactions , 1988 .
[122] Christian Nitzl,et al. Mediation Analyses in Partial Least Squares Structural Equation Modeling: Guidelines and Empirical Examples , 2017 .