授業の形態
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アクティブラーニング
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授業内容と方法
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(* This class include Japanese students.)
This class consists of 2 or 3 parts. We learn about a general process to be ready for re-useable knowledges by data mining theories, or about machine learning models as a mining method. Everyday has two or three persons have to explain/introduce about assigned references, basic theory from part 1 and applications from part 2.
According to circumstances (belong to students), we will take consideration time for practice about your-own work or interest applications.
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URGCC学習教育目標
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達成目標
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+ You can explain about general process of data mining or a few models in machine learnings. + You can explain/introduce about newly conference papers.
If we select part 3, + You can try to design/build the process to any your familiar topic. + You can evaluate/consider about raw data and results of your application.
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評価基準と評価方法
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You must explain/introduce/discuss about assigned references. presentation (50%), presentation documents (20%), Q&A and discussions (30%)
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履修条件
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Math (especially Linear Algebra and Statistics), experiences of programming.
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授業計画
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#1 : Guidance
====================================== Part 1: Introduction to data mining or machine learning
#2 : What is Data Mining? Some definitions, simple examples and applications. #3 : Machine Learning and Statistics, aspects of personal information. #4 : Instances and Attributes as Input, and Knowledge Representations as Output #5 : The basic methods and algorithms 1 #6 : The basic methods and algorithms 2 #7 : Credibile experiment designs and evaluation ways
#2 : What is Machine Learning? #3 : Classification by perceptron learning #4 : Classification models in Scikit-learn #5 : Building good training sets and pre-processing #6 : Compressing data via dimensionality reduction #7 : Model evaluation and Hyperparameter tuning
#8 : reserve day (e.g., adjustments for Part 2)
====================================== Part 2: Discussion about applications #9 : readings 1 #10 : readings 2 #11 : readings 3 #12 : readings 4 #13 : readings 5
====================================== Cont. Part 2 or Part 3: Introduction of your-own work and considerations. #14 : readings 4 or your-own work 1 #15 : readings 5 or your-own work 2
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事前学習
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read carefully references.
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事後学習
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read carefully references.
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教科書にかかわる情報
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教科書全体備考
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参考書にかかわる情報
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9780123748560
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we will read the part 1 of this book to learn the data mining theory.
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Ian H. Witten, Eibe Frank, Mark A. Hall
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Morgan Kaufmann
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2011
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1783555130
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we will read the part 1 of this book to learn the basis of machine learning.
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Sebastian Raschka
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Packt Publishing
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2015
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参考書全体備考
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使用言語
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日本語
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メッセージ
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In part 2, we will read some best papers on below conferences in recent 5 years. But I hope that you suggest us any related papers in your interest.
+ mainly application examples. IEEE/WIC/ACM International Conference on Web Intelligence (IEEE/WIC/ACM WI) ACM International Conference on Web Search and Data Mining (ACM WSDM) ACM Special Interest Group on Information Retrieval (SIG-IR)
+ mainly theoretical or technical papers. IEEE International Conference on Data Mining (ICDM) ACM SIGKDD Conference on Knowledge Discovery and Data Mining (ACM KDD)
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オフィスアワー
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メールアドレス
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この項目は教務情報システムにログイン後、表示されます。
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URL
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http://ie.u-ryukyu.ac.jp/~tnal/2017/dm-theory/
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