Exploring big data traits and data quality dimensions for big data analytics application using partial least squares structural equation modelling

被引:0
作者
Muslihah Wook
Nor Asiakin Hasbullah
Norulzahrah Mohd Zainudin
Zam Zarina Abdul Jabar
Suzaimah Ramli
Noor Afiza Mat Razali
Nurhafizah Moziyana Mohd Yusop
机构
[1] National Defence University of Malaysia,Department of Computer Science, Faculty of Defence Science and Technology
来源
Journal of Big Data | / 8卷
关键词
Big data analytics; Big data; Big data traits; Data quality dimensions; Partial least squares structural equation modelling; Survey questionnaire;
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学科分类号
摘要
The popularity of big data analytics (BDA) has boosted the interest of organisations into exploiting their large scale data. This technology can become a strategic stimulation for organisations to achieve competitive advantage and sustainable growth. Previous BDA research, however, has focused more on introducing more traits, known as Vs for big data traits, while ignoring the quality of data when examining the application of BDA. Therefore, this study aims to explore the effect of big data traits and data quality dimensions on BDA application. This study has formulated 10 hypotheses that comprised of the relationships of big data traits, accuracy, believability, completeness, timeliness, ease of operation, and BDA application constructs. This study conducted a survey using a questionnaire as a data collection instrument. Then, the partial least squares structural equation modelling technique was used to analyse the hypothesised relationships between the constructs. The findings revealed that big data traits can significantly affect all constructs for data quality dimensions and that the ease of operation construct has a significant effect on BDA application. This study contributes to the literature by bringing new insights to the field of BDA and may serve as a guideline for future researchers and practitioners when studying BDA application.
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