PLS marker variable approach to diagnosing and controlling for method variance 论文

2011International Conference on Information Systems引用 277
Advanced Text Analysis TechniquesStatistical Methods and ApplicationsTechnology Adoption and User Behaviour

详细信息

发表期刊/会议
International Conference on Information Systems
发表日期
2011-01-01
发表年份
2011

关键词

Advanced Text Analysis TechniquesStatistical Methods and ApplicationsTechnology Adoption and User Behaviour

摘要

Partial least squares (PLS) path modeling has been adopted as part of the statistical toolbox of many information systems (IS) scholars, particularly when dealing with survey data. Since these data are susceptible to common method variance, several statistical approaches for diagnosing and controlling for this undesirable feature have been developed. While most of these statistical techniques are only applicable to structural equation modeling (SEM), Liang, Saraf, Hu, and Xue (2007) proposed how one of these techniques can be used with PLS analysis. Since this was the first time that a method for controlling common method variance had been made available for PLS users, the method of Liang et al. quickly gained popularity in IS journals. However, recent analysis on the Liang et all approach shows that the method does neither detect nor control for common method variance. In this paper, we propose an alternative PLS marker variable approach for analyzing data contaminated with method variance and provide simulation evidence for the validity of this new approach.

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