情報学ゼミナールIIB
博士前期課程理工学研究科 - 理工学専攻
MSIS2244
コース情報
担当教員: 矢入 郁子
単位数: 2
年度: 2024
学期: 秋学期
曜限: 火2
形式: 対面授業
レベル: 600
アクティブラーニング: なし
他学部履修: 不可
評価方法
出席状況
授業参加
詳細情報
概要
This lecture will be done interactively using yairilab.net domain online server. You will learn how to perform three typical pattern classification methods: cluster analysis, support vector machines, and deep neural networks. This lecture is equivalent to the subject of “Cultivating specialized skills with combined knowledge” in the curriculum policy of the master's program at the Graduate School of Science and Engineering.
目標
The goal is to acquire skills that can apply cluster analysis, support vector machines, and deep neural networks to your research. This lecture corresponds to the Diploma Policy 2 of the master's program at the Graduate School of Science and Engineering. Students will acquire the expertise to be at the forefront in science and engineering and related fields, as well as the ability to develop new technologies and develop new fields.
授業外の学習
Take this lesson as an opportunity to deepen your knowledge and thoughts and increase your ability to execute. Thinking about the application of these technologies in your own research in some way every day, all of them are preparation and review of this class. As a guideline, a minimum of 1.5 hours of preparation / review is required.
所要時間: 190分
スケジュール
- Master Thesis Research and Pattern Classification Methods
- Examples of pattern classification in information and communication research
- An overview of pattern classification methods that ICT researchers should learn
- Introduction to cluster analysis
- Application of cluster analysis to your research, basic
- Applying cluster analysis to your research, advanced
- Applying cluster analysis to your research, professional
- Introduction to support vector machine
- Application of support vector machine to your research, basic
- Application of support vector machine to your research, advanced
- Application of support vector machine to your research, professional
- Introduction to Deep Neural Network (DNN)
- Application of DNN to your research, basic
- Application of DNN to your research, advanced
教科書
All materials are prepared and provided to all students.
参考書
書籍情報はありません。