Knowledge Representation and Artificial Intelligence
Knowledge Representation and Artificial Intelligence
Authors: Dr Sunil Joshi, Mr. Prasad T. Shaha, Dr. Namita Chawla and Dr. Shahid Thekiya
Editor: Dr. Prashant Chordiya
ISBN: 978-81-975393-1-2
DOI: https://doi.org/10.59646/krai/217
Date of Publication: June 27, 2024
About the Book:
There are a lot of books out there that introduce readers to AI, but this one stands out since it focuses on KR ideas instead. The foundation of AI is knowledge representation; programmers who want their programs to work by encoding and manipulating knowledge must carefully consider the scheme they will use to represent knowledge and the outcomes of their decisions. An examination of knowledge representation challenges serves as the book’s unique introduction to the subject of artificial intelligence. It is assumed that you have some acquaintance with computers and, ideally, with the fundamentals of formal logic. With an emphasis on knowledge representation, this book introduces students to AI and includes activities at the end of each chapter. If you are a student or professional in the field of computer science looking for a primer on artificial intelligence and knowledge representations, this is the book for you.
References
- McCarthy, J.; Minsky, M.L.; Rochester, N.; Shannon, C.E. A Proposal for the Dartmouth Summer Research Project on Artificial Intelligence. AI Mag. 2006, 27, 12.
- Becker, A.; Bar ‐ Yehuda, R.; Geiger, D. Randomised algorithms for the loop cutset problem. J. Artif. Intell. Res. 2000, 12, 219–
- Singer, J.; Gent, I.P.; Smaill, A. Backbone fragility and the local search cost peak. J. Artif. Intell. Res. 2000, 12, 235–270.
- Chen, ; Van Beek, P. Conflict ‐ directed backjumping revisited. J. Artif. Intell. Res. 2001, 14, 53–81.
- Hong, J. Goal recognition through goal graph analysis. J. Artif. Intell. Res. 2001, 15, 1–30.
- Stone, P.; Littman, M.L.; Singh, S.; Kearns, M. ATTAC‐2000: An adaptive autonomous bidding agent. J. Artif. Intell. Res. 2000, 15, 189–
- Peng, Y.; Zhang, X. Integrative data mining in systems biology: from text to network mining. Artif. Intell. Med. 2007, 41, 83– 86.
- Zhou, X.; Liu, B.; Wu, Z.; Feng, Y. Integrative mining of traditional Chines medicine literature and MEDLINE for functional gene networks. Artif. Intell. Med. 2007, 41, 87–104.
- Wang, S.; Wang, Y.; Du, W.; Sun, F.; Wang, X.; Zhou, C.; Liang,
- A multi ‐ approaches ‐ guided genetic algorithm with application to operon prediction. Artif. Intell. Med. 2007, 41, 151–159.
- Masnikosa, V.P. The fundamental problem of an artificial intelligence realization. Kybernetes 1998, 27, 71–80
- Metaxiotis, K.; Ergazakis, K.; Samouilidis, E.; Psarras, Decision support through knowledge management: The role of the artificial intelligence. Inf. Manag. Comput. Secur. 2003, 11, 216–221.
- Raynor, W.J. The international dictionary of artificial intelligence. Ref. Rev. 2000, 14, 1–380.
- Stefanuk, V.L.; Zhozhikashvili, A.V. Productions and rules in artificial intelligence. Kybernetes 2002, 31, 817–826.
- Tay, D.P.H.; Ho, D.K.H., Artificial intelligence and the mass appraisal of residential apartments. J. Prop. Valuat. Invest. 1992, 10, 525–540.
- Wongpinunwatana, ; Ferguson, C.; Bowen, P. An experimental investigation of the effects of artificial intelligence systems on the training of novice auditors. Manag. Audit. J. 2000, 15, 306–318.
- Oke, S.A. A literature review on artificial intelligence. Int. J. Inf. Manag. Sci. 2008, 19, 535–570.
- Carvalho, T.P.; Soares, F.A.A.M.N.; Vita, R.; da Francisco, P.R.; Basto, J.P.; Alcalá, S.G.S. A systematic literature review of machine learning methods applied to predictive maintenance. Comput. Ind. Eng. 2019, 1, 1–12
