Scientific community metaphor
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In computer science, the scientific community metaphor is a metaphor used to aid understanding scientific communities. The first publications on the scientific community metaphor in 1981 and 1982[1] involved the development of a programming language named Ether that invoked procedural plans to process goals and assertions concurrently by dynamically creating new rules during program execution. Ether also addressed issues of conflict and contradiction with multiple sources of knowledge and multiple viewpoints.
Development
The scientific community metaphor builds on the
In particular Latour's
Qualities of scientific research
Scientific research depends critically on monotonicity, concurrency, commutativity, and pluralism to propose, modify, support, and oppose scientific methods, practices, and theories. Quoting from Carl Hewitt,[1] scientific community metaphor systems have characteristics of monotonicity, concurrency, commutativity, pluralism, skepticism and provenance.
- monotonicity: Once something is published it cannot be undone. Scientists publish their results so they are available to all. Published work is collected and indexed in libraries. Scientists who change their mind can publish later articles contradicting earlier ones.
- concurrency: Scientists can work concurrently, overlapping in time and interacting with each other.
- commutativity: Publications can be read regardless of whether they initiate new research or become relevant to ongoing research. Scientists who become interested in a scientific question typically make an effort to find out if the answer has already been published. In addition they attempt to keep abreast of further developments as they continue their work.
- pluralism: Publications include heterogeneous, overlapping and possibly conflicting information. There is no central arbiter of truth in scientific communities.
- skepticism: Great effort is expended to test and validate current information and replace it with better information.
- provenance: The provenance of information is carefully tracked and recorded.
The above characteristics are limited in real scientific communities. Publications are sometimes lost or difficult to retrieve. Concurrency is limited by resources including personnel and funding. Sometimes it is easier to rederive a result than to look it up. Scientists only have so much time and energy to read and try to understand the literature. Scientific fads sometimes sweep up almost everyone in a field. The order in which information is received can influence how it is processed. Sponsors can try to control scientific activities. In Ether the semantics of the kinds of activity described in this paragraph are governed by the actor model.
Scientific research includes generating theories and processes for modifying, supporting, and opposing these theories.
These activities affect the adherence to approaches, theories, methods, etc. in scientific communities. Current adherence does not imply adherence for all future time. Later developments will modify and extend current understandings. Adherence is a local rather than a global phenomenon. No one speaks for the scientific community as a whole.
Opposing ideas may coexist in communities for centuries. On rare occasions a community reaches a breakthrough that clearly decides an issue previously muddled.
Ether
Ether used viewpoints to relativist information in publications. However a great deal of information is shared across viewpoints. So Ether made use of inheritance so that information in a viewpoint could be readily used in other viewpoints. Sometimes this inheritance is not exact as when the laws of physics in
Viewpoints were used to implement natural deduction (Fitch [1952]) in Ether. In order to prove a goal of the form (P implies Q) in a viewpoint V, it is sufficient to create a new viewpoint V' that inherits from V, assert P in V', and then prove Q in V'. An idea like this was originally introduced into programming language proving by Rulifson, Derksen, and Waldinger [1973] except since Ether is concurrent rather than being sequential it does not rely on being in a single viewpoint that can be sequentially pushed and popped to move to other viewpoints.
Ultimately resolving issues among these viewpoints are matters for negotiation (as studied in the sociology and philosophy of science by Geof Bowker, Michel Callon, Paul Feyerabend, Elihu M. Gerson, Bruno Latour, John Law, Karl Popper, Susan Leigh Star, Anselm Strauss, Lucy Suchman, etc.).
Emphasis on communities rather than individuals
The above research on individual human problem solving is complementary to the scientific community metaphor.
Current applications
Some developments in hardware and software technology for the Internet are being applied in light of the scientific community metaphor.Hewitt 2006
Legal concerns (e.g.,
Massive
See also
- Paraconsistent logics
- Planner
- Science studies
- The Structure of Scientific Revolutions
References
- ^ Bill Kornfeld and Carl Hewitt 1981, Kornfeld 1981, Kornfeld 1982
- ^ A historical perspective on developing foundations for privacy-friendly client cloud computing: the paradigm shift from “inconsistency denial” to “semantic integration” ArXiv January 30, 2009.
Further reading
- Julian Davies. "Popler 1.5 Reference Manual" University of Edinburgh, TPU Report No. 1, May 1973.
- Frederic Fitch. Symbolic Logic: an Introduction. Ronald Press, New York, 1952.
- Ramanathan Guha. Contexts: A Formalization and Some Applications PhD thesis, Stanford University, 1991.
- Pat Hayes. "Computation and Deduction" Mathematical Foundations of Computer Science: Proceedings of Symposium and Summer School, Štrbské Pleso, High Tatras, Czechoslovakia, September 3–8, 1973.
- Carl Hewitt. "PLANNER: A Language for Proving Theorems in Robots" IJCAI 1969
- Carl Hewitt. "Procedural Embedding of Knowledge In Planner" IJCAI 1971.
- Carl Hewitt, Peter Bishop and Richard Steiger. "A Universal Modular Actor Formalism for Artificial Intelligence" IJCAI 1973.
- Carl Hewitt. Large-scale Organizational Computing requires Unstratified Reflection and Strong Paraconsistency in "Coordination, Organizations, Institutions, and Norms in Agent Systems III" edited by Jaime Sichman, Pablo Noriega, Julian Padget and Sascha Ossowski. Springer. 2008.
- Carl Hewitt. Development of Logic Programming: What went wrong, What was done about it, and What it might mean for the future What Went Wrong and Why: Lessons from AI Research and Applications; papers from the 2008 AAAI Workshop. Technical Report WS-08-14. AAAI Press. July 2008.
- William Kornfeld and Carl Hewitt. "The Scientific Community Metaphor" IEEE Transactions on Systems, Man, and Cybernetics, SMC-11. 1981
- Bill Kornfeld. "The Use of Parallelism to Implement a Heuristic Search" IJCAI 1981.
- Bill Kornfeld. Parallelism in Problem Solving MIT EECS Doctoral Dissertation. August 1981.
- Bill Kornfeld. "Combinatorially Implosive Algorithms" CACM. 1982.
- Robert Kowalski "Predicate Logic as Programming Language" Memo 70, Department of Artificial Intelligence, Edinburgh University. 1973
- Imre Lakatos. "Proofs and Refutations" Cambridge: Cambridge University Press. 1976.
- Bruno Latour. Science In Action: How to Follow Scientists and Engineers Through Society, Harvard University Press, Cambridge Mass., USA, 1987.
- John McCarthy. "Generality in Artificial Intelligence" CACM. December 1987.
- Jeff Rulifson, Jan Derksen, and Richard Waldinger. "QA4, A Procedural Calculus for Intuitive Reasoning" SRI AI Center Technical Note 73, November 1973.
- Earl Sacerdoti, et al., "QLISP A Language for the Interactive Development of Complex Systems" AFIPS. 1976
- Push Singh "Examining the Society of Mind" To appear in Computing and Informatics