Artificial intelligence: a modern approach
Artificial intelligence: a modern approach
A robot laboratory for teaching artificial intelligence
SIGCSE '98 Proceedings of the twenty-ninth SIGCSE technical symposium on Computer science education
Non-traditional projects in the undergraduate AI course
Proceedings of the 37th SIGCSE technical symposium on Computer science education
Pedagogical possibilities for the dice game pig
Journal of Computing Sciences in Colleges
Using robots in an undergraduate artificial intelligence course: an experience report
FIE '01 Proceedings of the Frontiers in Education Conference, 2001. 31st Annual - Volume 02
Project MLEXAI: applying machine learning to web document classification
Journal of Computing Sciences in Colleges
Integrating games and machine learning in the undergraduate computer science classroom
GDCSE '08 Proceedings of the 3rd international conference on Game development in computer science education
Industrial robotic game playing: an AI course
Journal of Computing Sciences in Colleges
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An introductory Artificial Intelligence (AI) course provides students with basic knowledge of the theory and practice of AI as a discipline concerned with the methodology and technology for solving problems that are difficult to solve by other means. It is generally recognized that an introductory Artificial Intelligence course is challenging to teach. This is, in part, due to the diverse and seemingly disconnected core AI topics that are typically covered. Recently, work has been done to address the diversity of topics covered in the course and to create a theme-based approach. Russell and Norvig present an agent-centered approach [9]. Others have been working to integrate Robotics into the AI course [1, 2, 3].We present work on a project funded by the National Science Foundation with a goal of unifying the artificial intelligence course around the theme of machine learning. This involves the development and testing of an adaptable framework for the presentation of core AI topics that emphasizes the relationship between AI and computer science. Machine learning is inherently connected with the AI core topics and provides methodology and technology to enhance real-world applications within many of these topics. Machine learning also provides a bridge between AI technology and modern software engineering. In his article, Mitchell discusses the increasingly important role that machine learning plays in the software world and identifies three important areas: data mining, difficult-to-program applications, and customized software applications [6].We have developed a suite of adaptable, hands-on laboratory projects that can be closely integrated into the introductory AI course. Each project involves the design and implementation of a learning system which will enhance a particular commonly-deployed application. The goal is to enhance the student learning experience in the introductory artificial intelligence course by (1) introducing machine learning elements into the AI course, (2) implementing a set of unifying machine learning laboratory projects to tie together the core AI topics, and (3) developing, applying, and testing an adaptable framework for the presentation of core AI topics which emphasizes the important relationship between AI and computer science in general, and software development in particular. Details on this project as well as samples of course materials developed are published in [4, 5, 7, 8] and are available at the project website at http://uhaweb.hartford.edu/compsci/ccli.We present an overview of our work along with a detailed presentation of one of these projects and how it meets our goals.The project involves the development of a learning system for web document classification. Students investigate the process of classifying hypertext documents, called tagging, and apply machine learning techniques and data mining tools for automatic tagging. Our experiences using the projects are also presented.