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 [2023/05/12 21:50]
ge461 [Week 14 (May 8, May 10)]
start [2023/06/10 07:20] (current)
ge461 [Week 17 (May 29, May 31)]
Line 29: Line 29:
  
 ** Attendance** ** Attendance**
-  * Attendance is mandatory. A student who misses **more than 9 hours** will fail the course automatically. +  * <del>Attendance is mandatory. A student who misses **more than 9 hours** will fail the course automatically.</del> 
  
 ** Exam** ** Exam**
-  * TBD+  * The final exam will be held at EB-103 (for lastnames in the range AKSOY-GÜZEY) and EB-104 (for lastnames in the range HAMURCU-YILDIZ) during 18:00-21:00 on June 10, 2023.
  
 ** Projects** ** Projects**
Line 141: Line 141:
 Events: Feast of Ramadan holiday (Apr 21-23), National Sovereignty and Children's Day holiday (Apr 23)\\ Events: Feast of Ramadan holiday (Apr 21-23), National Sovereignty and Children's Day holiday (Apr 23)\\
  
 +{{ :ge461_supervisedlearning_part1.pdf |{{ :ge461_supervisedlearning_part2.pdf |}}}}
 ==== Week 12 (Apr 24, Apr 26) ====  ==== Week 12 (Apr 24, Apr 26) ==== 
 ** Machine learning; supervised learning; classifiers; deep learning. ** [Dündar]\\ ** Machine learning; supervised learning; classifiers; deep learning. ** [Dündar]\\
 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.pdf |}}\\
 Project/Exercise-Problem-Set/Homework: \\ Project/Exercise-Problem-Set/Homework: \\
 References: \\ References: \\
Line 152: Line 153:
 ** Machine learning; supervised learning; classifiers; deep learning. ** [Dündar]\\ ** Machine learning; supervised learning; classifiers; deep learning. ** [Dündar]\\
 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_part2.pdf |}} \\
 Project/Exercise-Problem-Set/Homework: \\ Project/Exercise-Problem-Set/Homework: \\
 References: \\ References: \\
Line 168: Line 169:
 ** Machine learning in healthcare. ** [Çukur] \\ ** Machine learning in healthcare. ** [Çukur] \\
 Topic Details: Healthcare analytics: diagnostics, medical imaging, in-patient care, hospital management, risk analytics, wearables. Deep learning architectures for medical applications; \\ Topic Details: Healthcare analytics: diagnostics, medical imaging, in-patient care, hospital management, risk analytics, wearables. Deep learning architectures for medical applications; \\
-Slides and Additional Material: \\ +Slides and Additional Material: {{ :ge461_ml_in_healthcare.pdf |}}\\ 
-Project/Exercise-Problem-Set/Homework:\\+Project: {{ :ge461_pw13_description.pdf |}} {{ :ge461_pw13_data.zip |}}\\
 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: \\ Events: \\
Line 176: Line 177:
 ** Data mining; online data stream classification; applications.**  [Can] \\ ** Data mining; online data stream classification; applications.**  [Can] \\
 Topic Details: Concept drift, ensemble-based classification, text mining. \\ Topic Details: Concept drift, ensemble-based classification, text mining. \\
-Slides and Additional Material:\\ +Slides and Additional Material: {{ :GE461_dataStreamMiningSpring23.pdf |}} {{ :GE461_dataStreamHWspringVer2_2023.pdf |}}\\ 
-Project/Exercise-Problem-Set/Homework:\\+Project/Exercise-Problem-Set/Homework: {{ ge461_datastreamhwspringver1_2023_2.pdf |}}\\
 References:  \\ References:  \\
 Events: \\ Events: \\
Line 183: Line 184:
 ==== Week 17 (May 29, May 31) ====  ==== Week 17 (May 29, May 31) ==== 
 ** 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, Multi-armed bandits \\ 
-Slides and Additional Material: \\+Slides and Additional Material: https://www.dropbox.com/s/65h9melvnvuml2x/ge461_reinforcementlearning.pdf?dl=0 \\
 Project/Exercise-Problem-Set/Homework: \\ Project/Exercise-Problem-Set/Homework: \\
 References: \\ References: \\
start.1683928219.txt.gz · Last modified: 2023/05/12 21:50 by ge461