Abstract

The conventional teaching methods for statistics, especially for introductory statistics course (precursor to data science) are not in accordance with the advancement and demand of today’s data-centric world. As the backbone of modern data science, computational statistics is deemed to revamp the learning of statistics to a large extent. As such, this study investigated the impact of experimenting computational statistics for data science in introductory statistics course from a Malaysian perspective. We employed a pre-, postand delayed post-test quasi-experimental design in this study. Our sample included 100 randomly selected students enrolled in an introductory course in a Malaysian public university. Students were equally separated into computational (followed computational statistics approach in learning statistics) and conventional (followed only conventional approach in learning statistics) groups. Students in both groups were assessed at three stages: initial, medial and final, respectively. Their performance (assessment marks) was used to measure the effectiveness of computational statistics approach in the learning process of introductory statistics. Results attested that computational group students performed significantly better than the conventional group students in both medial and final assessments. Furthermore, computational group students showed greater improvement from initial to medial assessment and sustained their performance from medial to final assessment, indicating that their knowledge acquisition was effective in the computational statistics approach. Our findings implied that computational statistics approach in introductory statistics course exerted a positive impact on students’ statistics learning and performance, leading towards effective knowledge and computing skills acquisition for data science.

Highlights

  • As data analytics has become a part and parcel of today’s world, aspiring graduates from various disciplines of study need data science to contribute valuably to any modern workplace across the globe

  • The mean of initial assessment marks for computational group was slightly higher than conventional group, suggesting that statistics knowledge from computational group students might be higher than those in conventional group

  • The independent samples t-test (t(98) = −0.99, p > 0.05) and the 95% confidence intervals (CI) for the mean difference revealed that the initial assessment marks of students in both groups was not statistically significantly different

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Summary

Introduction

As data analytics has become a part and parcel of today’s world, aspiring graduates from various disciplines of study need data science to contribute valuably to any modern workplace across the globe. The availability of vast data (big data) require students to understand data using computational tools for data analytics (management, exploratory analysis, visualization, and modelling) [1 - 4]. Data centered approach to problem finding and solving requires students to perceive features of computation and data science which require statistical skills as early as possible [5]. Setting up forerunners in introductory statistics course (precursor to data science) will ensure students to kick-start [6]. The conventional teaching methods for statistics, especially for introductory statistics course are not in accordance with the advancement and demand of data science [8]. Several researchers asserted that computational statistics approach (practical data computing) can improve the existing conventional teaching methods for statistics [1, 9, 10]

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