Certificate in Data Mining for Data-Driven School Improvement
-- ViewingNowThe Certificate in Data Mining for Data-Driven School Improvement is a comprehensive course designed to equip education professionals with essential data mining skills for data-driven decision making in school improvement. This course is vital for educators seeking to leverage data to enhance student outcomes, optimize resources, and promote evidence-based practices in education.
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โข Introduction to Data Mining – Understanding the basics of data mining, its importance, and applications in school improvement. โข Data Collection – Identifying and gathering relevant data from various sources for data-driven decision making. โข Data Preprocessing – Cleaning, transforming, and preparing raw data for further analysis and mining. โข Data Analysis Techniques – Applying exploratory data analysis techniques to uncover insights and trends. โข Statistical Methods in Data Mining – Utilizing statistical tools and techniques in data mining to support data-driven school improvement. โข Data Mining Algorithms – Exploring popular data mining algorithms, such as decision trees, clustering, and association rules. โข Predictive Modeling – Building predictive models to forecast future trends and inform decision making. โข Data Visualization – Presenting data mining results in a visual format to facilitate understanding and communication. โข Data-Driven Decision Making – Applying data mining insights to make informed decisions for school improvement. โข Ethics in Data Mining – Ensuring responsible and ethical use of data mining in educational settings.
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