Using a Study Planner with Predictive Analytics: Exploring the Effects on Academic Performance and Time Management: A Systematic Review
Abstract
This study examines the impact of a data driven
study planner with predictive analytics on students'
academic performance and time management to find out
the effect of the innovation. The research aims to determine
the effectiveness of task tracking and time management
tools in improving the time management skills of students
which improves academic success. The analysis of students'
performance by using predictive analytics includes
examining students' academic behaviour, interaction
patterns and the advantages they get from the study
planner. The study also identifies the advantages and the
limitations of the planner and focuses on preventing the
students from falling behind in their work by offering
personalized insights and visualizations that align with the
study patterns of each individual and provide the required
motivational support. Additionally, the research explores
the role of innovative testing methods to improve academic
outcomes and provide suitable suggestions to enhance and
develop study planners with new critical features.
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