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Prediction-oriented modeling in business research by means of PLS path modeling: Introduction to a JBR special section

机译:通过PLS路径建模在业务研究中面向预测的建模:JBR特殊部分简介

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Under the main theme "prediction-oriented modeling in business research by means of partial least squares path modeling" (PLS), the special issue presents 17 papers. Most contributions include content from presentations at the 2nd International Symposium on Partial Least Squares Path Modeling: The Conference for PLS Users, which took place at the Universidad de Sevilla (Spain) from June 16 to 19, 2015. This conference provided PLS users with a platform for the fruitful exchange of ideas on variance-based structural equation modeling. At the same time, the conference addressed the latest methodological advances and their use in research practice. Finally, the conference resumed and enriched the ongoing discussion on the strengths and weaknesses of PLS. Researchers often emphasize that predictive capabilities is a strength of the PIS method. Nevertheless, methodological advances and applications in this direction are rare. The scientific committee therefore selected high-quality papers that mainly advance PLS and prediction. The special issue editors believe that these special issues will become the starting point for a more intensive use of predictive modeling in the social sciences discipline and for additional advances that will exploit PIS' capabilities in this area. (C) 2016 Elsevier Inc. All rights reserved.
机译:本期主要主题为“通过偏最小二乘路径建模进行商业研究中的面向预测的建模”(PLS),共发表了17篇论文。大多数贡献包括2015年6月16日至19日在西班牙塞维利亚大学举行的第二届国际部分最小二乘路径建模:PLS用户会议国际研讨会上的演讲内容。一个基于方差的结构方程建模思想交流的平台。同时,会议讨论了最新的方法学进展及其在研究实践中的应用。最后,会议恢复并丰富了有关PLS优缺点的正在进行的讨论。研究人员经常强调预测能力是PIS方法的优势。然而,在这个方向上方法学的进步和应用很少。因此,科学委员会选择了主要推进PLS和预测的高质量论文。特刊编辑认为,这些特刊将成为在社会科学学科中更广泛使用预测模型的起点,并将成为利用PIS在此领域功能的其他进步的起点。 (C)2016 Elsevier Inc.保留所有权利。

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