Hiroshima University Syllabus

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Japanese
Academic Year 2024Year School/Graduate School School of Science
Lecture Code HB410000 Subject Classification Specialized Education
Subject Name データ科学
Subject Name
(Katakana)
データカガク
Subject Name in
English
Data Science
Instructor YANAGIHARA HIROKAZU
Instructor
(Katakana)
ヤナギハラ ヒロカズ
Campus Higashi-Hiroshima Semester/Term 2nd-Year,  Second Semester,  4Term
Days, Periods, and Classrooms (4T) Thur5-6,Fri3-4:IMC-Main 2F PC Rm
Lesson Style Lecture Lesson Style
(More Details)
 
Lecture using power point and blackboard 
Credits 2.0 Class Hours/Week   Language of Instruction J : Japanese
Course Level 3 : Undergraduate High-Intermediate
Course Area(Area) 25 : Science and Technology
Course Area(Discipline) 01 : Mathematics/Statistics
Eligible Students
Keywords Data base, Search, Hypothesis testing, Estimation, Data analysis 
Special Subject for Teacher Education   Special Subject  
Class Status
within Educational
Program
(Applicable only to targeted subjects for undergraduate students)
 
Criterion referenced
Evaluation
(Applicable only to targeted subjects for undergraduate students)
Mathematics
(Knowledge and Understanding)
・Acquiring knowledge and vision on advanced theories as an extension of core theory of modern mathematics.
(Abilities and Skills)
・To learn basic knowledge, skills, and attitudes related to information. Based on them, to be able to process, output and input information, as well as to utilize information appropriately. 
Class Objectives
/Class Outline
Data science is the science for the data itself. We study data filing (data base), data searching, data analysis, and perform the exercise using suitable software if needed.  
Class Schedule lesson1 Introduction
lesson2 Getting used to the R 1
lesson3 Getting used to the R 2
lesson4 Getting used to the R 3
lesson5 Data filing and searching 1
lesson6 Data filing and searching 2
lesson7 Scatter plot and single regression 1
lesson8 Scatter plot and single regression 2
lesson9 Multiple regression analysis 1
lesson10 Multiple regression analysis 2
lesson11 Multiple regression analysis 3
lesson12 Generalized linear model
lesson13 Cluster analysis 1
lesson14 Cluster analysis 2
lesson15 Polynomial smoothing 
Text/Reference
Books,etc.
Not specified 
PC or AV used in
Class,etc.
 
(More Details) Blackboard, power-point 
Learning techniques to be incorporated  
Suggestions on
Preparation and
Review
Please do not hesitate to ask a question if you have dubious points. 
Requirements  
Grading Method Report 
Practical Experience  
Summary of Practical Experience and Class Contents based on it  
Message  
Other   
Please fill in the class improvement questionnaire which is carried out on all classes.
Instructors will reflect on your feedback and utilize the information for improving their teaching. 
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