Generality in artificial intelligence

My 1971 Turing Award Lecture was entitled "Generality in Artificial Intelligence." The topic turned out to have been overambitious in that I discovered I was unable to put my thoughts on the subject in a satisfactory written form at that time. It would have been better to have reviewed my previous work rather than attempt something new, but such was not my custom at that time. I am grateful to ACM for the opportunity to try again. Unfortunately for our science, although perhaps fortunately for this project, the problem of generality in artificial intelligence (AI) is almost as unsolved as ever, although we now have many ideas not available in 1971. This paper relies heavily on such ideas, but it is far from a full 1987 survey of approaches for achieving generality. Ideas are therefore discussed at a length proportional to my familiarity with them rather than according to some objective criterion. It was obvious in 1971 and even in 1958 that AI programs suffered from a lack of generality. It is still obvious; there are many more details. The first gross symptom is that a small addition to the idea of a program often involves a complete rewrite beginning with the data structures. Some progress has been made in modularizing data structures, but small modifications of the search strategies are even less likely to be accomplished without rewriting. Another symptom is no one knows how to make a general database of commonsense knowledge that could be used by any program that needed the knowledge. Along with other information, such a database would contain what a robot would need to know about the effects of moving objects around, what a person can be expected to know about his family, and the facts about buying and selling. This does not depend on whether the knowledge is to be expressed in a logical language or in some other formalism. When we take the logic approach to AI, lack of generality shows up in that the axioms we devise to express commonsense knowledge are too restricted in their applicability for a general commonsense database. In my opinion, getting a language for expressing general commonsense knowledge for inclusion in a general database is the key problem of generality in AI. Here are some ideas for achieving generality proposed both before and after 1971. I repeat my disclaimer of comprehensiveness.

[1]  Allen Newell,et al.  SOAR: An Architecture for General Intelligence , 1987, Artif. Intell..

[2]  Vladimir Lifschitz,et al.  Computing Circumscription , 1985, IJCAI.

[3]  William R. Swartout,et al.  Rule-based expert systems: The mycin experiments of the stanford heuristic programming project , 1985 .

[4]  John McCarthy,et al.  Applications of Circumscription to Formalizing Common Sense Knowledge , 1987, NMR.

[5]  Michael Lougee,et al.  Computer culture. The scientific, intellectual and social impact of the computer. , 1987, Annals of the New York Academy of Sciences.

[6]  J. McCarthy Some Expert Systems Need Common Sense , 1984, Annals of the New York Academy of Sciences.

[7]  Edward H. Shortliffe,et al.  Rule Based Expert Systems: The Mycin Experiments of the Stanford Heuristic Programming Project (The Addison-Wesley series in artificial intelligence) , 1984 .

[8]  John McCarthy,et al.  SOME PHILOSOPHICAL PROBLEMS FROM THE STANDPOINT OF ARTI CIAL INTELLIGENCE , 1987 .

[9]  Drew McDermott,et al.  Non-Monotonic Logic I , 1987, Artif. Intell..

[10]  Raymond Reiter,et al.  A Logic for Default Reasoning , 1987, Artif. Intell..

[11]  John McCarthy,et al.  Circumscription - A Form of Non-Monotonic Reasoning , 1980, Artif. Intell..

[12]  J. McCarthy First Order Theories of Individual Concepts and Propositions. , 1979 .

[13]  Jon Doyle,et al.  Truth Maintenance Systems for Problem Solving , 1977, IJCAI.

[14]  Edward H. Shortliffe,et al.  Production Rules as a Representation for a Knowledge-Based Consultation Program , 1977, Artif. Intell..

[15]  Allen Newell,et al.  Human Problem Solving. , 1973 .

[16]  George W. Ernst,et al.  GPS : a case study in generality and problem solving , 1971 .

[17]  Richard Fikes,et al.  STRIPS: A New Approach to the Application of Theorem Proving to Problem Solving , 1971, IJCAI.

[18]  John McCarthy,et al.  Programs with common sense , 1960 .

[19]  Richard M. Friedberg,et al.  A Learning Machine: Part II , 1959, IBM J. Res. Dev..

[20]  LONDON: HER MAJESTY'S STATIONERY OFFICE , 2022 .