UNIT-I:
What Is Predictive Data Analytics- Predictive Data Analytics Tools- What Is Machine Learning- How does Machine Learning Works- The Predictive Data Analytics Project Lifecycle: CRISPDM- Data to Insights to Decisions: Converting Business Problems into Analytics Solutions-Assessing Feasibility-Designing the Analytics Base Table-Designing and Implementing Features-Different Types of Data-Different Types of Features-Handling Time-Implementing Features
UNIT-II:
Data Exploration: The Data Quality Report- Getting to Know the Data- Identifying Data Quality Issues- Handling Data Quality Issues- Advanced Data Exploration: Visualizing Relationships between Features – Measuring Covariance and Correlation- Data Preparation: Normalization- Binning- Sampling
UNIT-III:
Information-based Learning: Fundamentals- Decision Trees- Shannon᧙s Entropy Model- Information Gain- Standard Approach: The ID3 Algorithm- Extensions and Variations: Alternative Feature Selection and Impurity Metrics- Handling Continuous Descriptive Features- Predicting Continuous Targets- Tree Pruning- Model Ensembles
UNIT-IV:
Similarity-based Learning: Big Idea- Fundamentals- Standard Approach: The Nearest Neighbor Algorithm -Extensions and Variations. Probability-based Learning: Standard Approach: The Naive Bayes Model- Error-based Learning: Fundamentals- Standard Approach: Multivariable Linear Regression with Gradient Descent
UNIT-V:
The Art of Machine Learning for Predictive Data Analytics: Different Perspectives on Prediction Models- Choosing a Machine Learning Approach- A Descriptive Statistics and Data Visualization for Machine Learning: Central Tendency- Descriptive Statistics for Categorical Features- Populations and Samples- Data Visualization
TEXT(S)
- John D. Kelleher, Brian Mac Namee, Aoife D᧙Arcy ,Fundamentals of Machine Learning For Predictive Data Analytics, 2015, Illustrated edition, The MIT Press, ISBN-10 : 0262029448 ISBN-13 : 978-0262029445
REFERENCE MATERIALS
- Andreas Wichert , Luis Sa-Couto, Machine Learning ᧔ A Journey to Deep Learning, 2021, World Scientific Publishing Co Pte Ltd, ISBN-10: 9811234051, ISBN-13 : 978-9811234057.
- Ralph Winters, Practical Predictive Analytics 2017, Packt Publishing Limited, ISBN-10 : 1785886185, ISBN-13 : 978-1785886188
- An***e Bari, Mohamed Chaouchi , Tommy Jung, Predictive Analytics For Dummies (For Dummies Series), 2014, John Wiley & Sons Publisher, ISBN-10 : 1118728963, ISBN-13 : 978-1118728963.
E-RESOURCES
- https://maru***ech.com/machine-learning-predictive-analytics/
- https://www.sas.com/en_gb/insights/articles/analytics/a-guide-to-predictive-analytics-and-machine-learning.html
- https://www.techtarget.com/searchenterpriseai/feature/Machine-learning-and-predictive-analytics-work-better-together
- https://www.bmc.com/blogs/machine-learning-vs-predictive-analytics/