Primary Navigation
Want to create or adapt books like this? Learn more about how Pressbooks supports open publishing practices.
Book Contents Navigation
Recommended Citation
Dedication
Acknowledgements
About This Textbook
About the Authors
1. Dear Students
2. Course Outline
3. Code of Conduct
4. Academic Integrity
5. Accessibility & Other Classroom Policies
6. Welcome to CIS4020
7. What is Community-Engaged Learning?
8. Setting Expectations
9. Asking Good Questions
10. The Data Science Process
11. Exploring Data
12. Preliminary Data Analysis
13. Statistical Distributions
14. Hypothesis Testing
15. Confidence Intervals & Sampling Distributions
16. Logistic Regression
17. Simple Linear Regression
18. Multiple Linear Regression
19. Poisson Regression
20. Naive Bayes Classifier
21. Support Vector Machines
22. Decision Trees
23. K Nearest Neighbours
24. Term Project
25. Assignment 1
26. Assignment 2
27. Assignment 3
28. Assignment 4
29. Assignment 5
30. K Means
31. Neural Networks
32. Mean-Shift Clustering
33. Gaussian Mixture Models
34. Agglomerative Hierarchical Clustering
35. Working As A Team
36. Ethics & Do No Harm
37. Annotated Bibliographies & Literature Reviews
38. Types of Data & Simulations
39. Data Visualizations
40. Storyboards & Dashboards
41. Science Communication
42. Critiquing Science Communication
43. Critical Reviews
44. Slide Decks
45. R Scripts
Appendix
Previous/next navigation
Community Engaged Data Science Copyright © 2023 by Daniel Gillis. All Rights Reserved.