This shows you the differences between two versions of the page.
Both sides previous revision Previous revision Next revision | Previous revision | ||
start [2025/02/22 20:27] ge461 [Week 5 (Feb 24, Feb 27)] |
start [2025/03/23 16:50] (current) ge461 |
||
---|---|---|---|
Line 81: | Line 81: | ||
** Data collection; storage; querying; SQL, NoSQL; cloud; distributed storage and computing. ** [Körpeoğlu] \\ | ** Data collection; storage; querying; SQL, NoSQL; cloud; distributed storage and computing. ** [Körpeoğlu] \\ | ||
Topic Details: RDMBs, SQL; SQLite, Pandas; NoSQL; MapReduce and Hadoop; Spark.\\ | Topic Details: RDMBs, SQL; SQLite, Pandas; NoSQL; MapReduce and Hadoop; Spark.\\ | ||
- | Slides and Additional Material: | + | Slides and Additional Material: |
Project/ | Project/ | ||
References: | References: | ||
Line 94: | Line 94: | ||
**Basic models; parametric models; fitting. ** [Arıkan] \\ | **Basic models; parametric models; fitting. ** [Arıkan] \\ | ||
Topic Details: Multiparameter Linear Regression\\ | Topic Details: Multiparameter Linear Regression\\ | ||
- | Slides and Additional Material: {{ : | + | Slides and Additional Material: {{ : |
Project: Solve following questions using Linear Regression: Exercises 3.7.8 and 3.7.9 in the ISLR Reference Book given below \\ | Project: Solve following questions using Linear Regression: Exercises 3.7.8 and 3.7.9 in the ISLR Reference Book given below \\ | ||
References: An Introduction to Statistical Learning with Applications in Python, R, Gareth James, Daniela Witten, Trevor Hastie, Robert Tibshirani and Jonathon Taylor. \\ | References: An Introduction to Statistical Learning with Applications in Python, R, Gareth James, Daniela Witten, Trevor Hastie, Robert Tibshirani and Jonathon Taylor. \\ | ||
Line 113: | Line 113: | ||
** Dimensionality reduction; visualization.** [Aksoy] \\ | ** Dimensionality reduction; visualization.** [Aksoy] \\ | ||
Topic Details: Feature reduction, feature selection, high-dimensional data visualization.\\ | Topic Details: Feature reduction, feature selection, high-dimensional data visualization.\\ | ||
- | Slides and Additional Material: | + | Slides and Additional Material: |
- | Project/ | + | Project/ |
References: [[https:// | References: [[https:// | ||
[[https:// | [[https:// | ||
Line 122: | Line 122: | ||
** Unsupervised learning, clustering. | ** Unsupervised learning, clustering. | ||
Topic Details: K-means clustering, mixture models, hierarchical clustering.\\ | Topic Details: K-means clustering, mixture models, hierarchical clustering.\\ | ||
- | Slides and Additional Material:\\ | + | Slides and Additional Material: |
Project/ | Project/ | ||
References: [[https:// | References: [[https:// | ||
Line 149: | Line 149: | ||
** Machine learning in healthcare. ** [Çukur] \\ | ** Machine learning in healthcare. ** [Çukur] \\ | ||
Topic Details: Healthcare analytics: diagnostics, | Topic Details: Healthcare analytics: diagnostics, | ||
- | Slides and Additional Material: | + | Slides and Additional Material: |
- | Project/ | + | Project/ |
References: Hastie, Tibshirani and Friedman, The Elements of Statistical Learning, Ch. 11 and 14; Mead, Analog VLSI and Neural Systems, Ch. 4; Bishop, Pattern Recognition and Machine Learning, Ch. 5\\ | References: Hastie, Tibshirani and Friedman, The Elements of Statistical Learning, Ch. 11 and 14; Mead, Analog VLSI and Neural Systems, Ch. 4; Bishop, Pattern Recognition and Machine Learning, Ch. 5\\ | ||
Events: National Sovereignty and Children' | Events: National Sovereignty and Children' | ||
Line 157: | Line 157: | ||
** Data mining; online data stream classification; | ** Data mining; online data stream classification; | ||
Topic Details: Concept drift, ensemble-based classification, | Topic Details: Concept drift, ensemble-based classification, | ||
- | Slides and Additional Material:\\ | + | Slides and Additional Material: |
+ | Project Tentative Days: Announcement **April 28** or earlier, Due date: **May 18, 23: | ||
Project/ | Project/ | ||
References: | References: |