Both sides previous revision
Previous revision
Next revision
|
Previous revision
|
start [2025/03/20 12:54] ge461 [Week 13 (Apr 21, Apr 24)] |
start [2025/04/24 07:07] (current) ge461 [Week 15 (May 5, May 8)] |
Topic Details: Feature reduction, feature selection, high-dimensional data visualization.\\ | Topic Details: Feature reduction, feature selection, high-dimensional data visualization.\\ |
Slides and Additional Material: {{ :ge461_dimensionality.pdf |Dimensionality slides}}, {{ :knaw_t-sne_talk.pptx |t-SNE slides}}\\ | Slides and Additional Material: {{ :ge461_dimensionality.pdf |Dimensionality slides}}, {{ :knaw_t-sne_talk.pptx |t-SNE slides}}\\ |
Project/Exercise-Problem-Set/Homework: (tentative dates: assigned March 24, 2025, due 23:59 on April 7, 2025)\\ | Project/Exercise-Problem-Set/Homework: [{{ :ge461_project_dimensionality.pdf |Project}} ({{ :fashion_mnist.zip |data}})] (due 23:59 on April 7, 2025)\\ |
References: [[https://www.mathworks.com/help/stats/dimensionality-reduction.html|Matlab: dimensionality reduction]], [[https://scikit-learn.org/stable/modules/decomposition.html|Scikit-learn: decomposition]], [[https://scikit-learn.org/stable/auto_examples/index.html#decomposition|Scikit-learn: decomposition examples]], [[https://scikit-learn.org/stable/modules/manifold.html|Scikit-learn: manifold learning]], [[https://www.mathworks.com/discovery/data-visualization.html|Matlab: data visualization]], | References: [[https://www.mathworks.com/help/stats/dimensionality-reduction.html|Matlab: dimensionality reduction]], [[https://scikit-learn.org/stable/modules/decomposition.html|Scikit-learn: decomposition]], [[https://scikit-learn.org/stable/auto_examples/index.html#decomposition|Scikit-learn: decomposition examples]], [[https://scikit-learn.org/stable/modules/manifold.html|Scikit-learn: manifold learning]], [[https://www.mathworks.com/discovery/data-visualization.html|Matlab: data visualization]], |
[[https://matplotlib.org/|Matplotlib: data visualization]], [[https://lvdmaaten.github.io/tsne/|t-SNE]]\\ | [[https://matplotlib.org/|Matplotlib: data visualization]], [[https://lvdmaaten.github.io/tsne/|t-SNE]]\\ |
** Machine learning; supervised learning; classifiers; deep learning. ** [Dibeklioğlu]\\ | ** Machine learning; supervised learning; classifiers; deep learning. ** [Dibeklioğlu]\\ |
Topic Details: Bayesian decision theory, linear discriminants, introduction to neural networks, support vector machines, decision trees.\\ | Topic Details: Bayesian decision theory, linear discriminants, introduction to neural networks, support vector machines, decision trees.\\ |
Slides and Additional Material:\\ | Slides and Additional Material: {{ :ge461_supervisedlearning_part1_2025s.pdf |Supervised Learning Part-1}}, {{ :ge461_supervisedlearning_part2_2025s.pdf |Supervised Learning Part-2}}\\ |
Project/Exercise-Problem-Set/Homework: \\ | Project/Exercise-Problem-Set/Homework: \\ |
References: \\ | References: \\ |
** Machine learning; supervised learning; classifiers; deep learning.** [Dibeklioğlu] \\ | ** Machine learning; supervised learning; classifiers; deep learning.** [Dibeklioğlu] \\ |
Topic Details: Activation functions, convolutional neural networks, recurrent architectures.\\ | Topic Details: Activation functions, convolutional neural networks, recurrent architectures.\\ |
Slides and Additional Material:\\ | Slides and Additional Material:{{ :ge461_deep_learning_2025s.pdf | Deep Learning}}\\ |
Project/Exercise-Problem-Set/Homework:\\ | Project/Exercise-Problem-Set/Homework:[{{ :GE461_project_supervised_learning_2025s.pdf |Project Description}}, {{ :data_supervised_learning_project.zip |Data}}] (due 23:55 on April 27, 2025)\\ |
References: \\ | References: \\ |
Events: \\ | Events: \\ |
| |
| |
==== Week 13 (Apr 21, Apr 24) ==== | ==== Week 13 (Apr 21, Apr 24) ==== |
** Reinforcement learning; applications. ** [Tekin] \\ | ** Reinforcement learning; applications. ** [Tekin] \\ |
Topic Details: Applications of Reinforcement Learning, Markov Decision Processes, Value Iteration, Q Learning\\ | Topic Details: Applications of Reinforcement Learning, Markov Decision Processes, Value Iteration, Q Learning\\ |
Slides and Additional Material:\\ | Slides and Additional Material:{{ :ge461_reinforcementlearning.pdf |}} \\ |
Project/Exercise-Problem-Set/Homework: \\ | Project/Exercise-Problem-Set/Homework: \\ |
References: \\ | References: \\ |