GraduateCourse Syllabus
Course Title | in Chinese | 人工智能 | |||||||||||
in English | Artificial Intelligence | ||||||||||||
Course Number | | Type of Degree Suitable | Master Degree | ||||||||||
Total Hours | 60 | Class Hours | 60 | Credit | 3 | ||||||||
Program of Practice or Experiments | | Computer-using Hours | | ||||||||||
Department | Computer | Semester | Autumn | Form of Exam | Writing a paper and interviewing with the lecturer | ||||||||
Chief Lecturer | Name | Zhai Yuqing | Professional Title | Associate Professor | |||||||||
E-mail | yqzhai@seu.edu.cn | Personal Website | http://cse.seu.edu.cn/people/yqzhai/ | ||||||||||
Course Language | Chinese | Teaching Material Website | |||||||||||
Class of Discipline | The first level | Title of Discipline | Computer Science &Technology | ||||||||||
Number of Experiments | | Preliminary Courses | 60 | ||||||||||
Teaching Reference Books | Book Title | Author | Publishing House | Year of Publication | Edition Number | ||||||||
Main Textbook | Artificial Intelligence(1,2) | Lu Ruqian | Science Press | 1997 | 1 | ||||||||
Main Reference Books | Artificial Intelligence �A New Synthesis | Nillson | Mechanical Industry Press | 2000 | 1 | ||||||||
Advanced Artificial Intelligence | Shi Zhongzhi | Science Press | 1997 | 1 | |||||||||
Fundamentals of Artificial Intelligence | Shao Junli | Electronic Industry Press | 2000 | 1 | |||||||||
I.
The requirements that should begrasped by the students in the course are the basic concepts, basic principlesand basic methodology occurred in the course. The examination method of thiscourse is that every student should write a paper that should include the ideasin the course and relate to some real application fields. And the number ofwords occurred in the body of the paper should be more than 3000. Then thelecturer would interview with the students to exchange the ideas of theirpapers. Finally, the lecturer would give the students scores in the light oftheir papers and interviewing cases.
II.Teaching Syllabus (chapters, including sections)
The mainlectures in the course include:
III. TeachingCalendar:
Week | Course Contents | Teaching Method |
1 | Basic concepts in artificial intelligence Research methodology in artificial intelligence | Lecturing |
2 | Survey of the researches in artificial intelligence Knowledge and knowledge representation rules | Lecturing |
3 | Production system | Lecturing |
4 | Semantic networks | Lecturing |
5 | Other knowledge representation methods Survey of searching methodology | Lecturing |
6 | H* and A* algorithms Survey of logic in artificial intelligence | Lecturing |
7 | Modal logic and related applications | Lecturing |
8 | Modal logic and related applications Non-monotonic logic | Lecturing |
9 | Inductive logic | Lecturing |
10 | Non-determined logic Survey of machine learning | Lecturing |
11 | Inductive learning Analysis learning Genetic learning | Lecturing |
12 | Distributed artificial intelligence and multi-agent systems | Lecturing |
13 | Data mining and knowledge discovery Survey of business intelligence | Lecturing |
14 | Techniques combing artificial intelligence with electronic business | Lecturing |
15 | Examination | Discussing |
16 | | |
17 | | |