Big Data and Education

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Free Online Course: Big Data and Education provided by edX is a comprehensive online course, which lasts for 8 weeks long, 6-12 hours a week. The course is taught in English and is free of charge. Upon completion of the course, you can receive an e-certificate from edX. Big Data and Education is taught by Ryan Baker.

Overview
  • Online and software-based learning tools have been used increasingly in education. This movement has resulted in an explosion of data, which can now be used to improve educational effectiveness and support basic research on learning.

    In this course, you will learn how and when to use key methods for educational data mining and learning analytics on this data. You will examine the methods being developed by researchers in the educational data mining, learning analytics, learning-at-scale, student modeling, and artificial intelligence communities. You'll also gain experience with standard data mining methods frequently applied to educational data. You will learn how to apply these methods and when to apply them, as well as their strengths and weaknesses for different applications.

    The course will discuss how to use each method to answer education research questions, and to drive intervention and improvement in educational software and systems. Methods will be covered at a theoretical level, and in terms of learning how to apply them in Python or using software tools like RapidMiner. We will also discuss validity and generalizability; establishing how trustworthy and applicable the analysis results.

Syllabus
  • Week 1: Prediction Modeling
    Regressors
    Classifiers

    Week 2: Model Goodness and Validation
    Detector Confidence
    Diagnostic Metrics
    * Cross-Validation and Over-Fitting

    Week 3: Behavior Detection and Feature Engineering
    Ground Truth for Behavior Detection
    Data Synchronization and Grain Size
    Feature Engineering
    Knowledge Engineering

    Week 4: Knowledge Inference
    Knowledge Inference
    Bayesian Knowledge Tracing (BKT)
    Performance Factor Analysis
    Item Response Theory

    Week 5: Relationship Mining
    Correlation Mining
    Causal Mining
    Association Rule Mining
    Sequential Pattern Mining
    * Network Analysis

    Week 6: Visualization
    Learning Curves
    Moment by Moment Learning Graphs
    Scatter Plots
    State Space Diagrams
    * Other Awesome EDM Visualizations

    Week 7: Structure Discovery
    Clustering
    Validation and Selection
    Factor Analysis
    Knowledge Inference Structures

    Week 8: Discovery with Models
    Discovery with Models
    Text Mining
    * Hidden Markov Models