User Tools

Site Tools


start

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

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)]
Line 114: Line 114:
 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 datesassigned 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]]\\
Line 133: Line 133:
 ** 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: \\
Line 141: Line 141:
 ** 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) ==== 
Line 166: Line 167:
 ** 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: \\
start.1742475244.txt.gz · Last modified: 2025/03/20 12:54 by ge461