Software:Cyc

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Short description: Artificial intelligence project
Cyc
Cyc Projects Logos.png
Clockwise: Logos for Cyc's Knowledge Base, Inference Engines, Actionable Output, Intelligent Data Selection
Original author(s)Douglas Lenat
Developer(s)Cycorp, Inc.
Initial release1984; 40 years ago (1984)
Stable release
6.1 / 27 November 2017; 7 years ago (2017-11-27)
Written inLisp, CycL, SubL
TypeOntology and knowledge base and knowledge representation language and inference engine
Websitewww.cyc.com

Cyc (pronounced /ˈsk/ SYKE) is a long-term artificial intelligence project that aims to assemble a comprehensive ontology and knowledge base that spans the basic concepts and rules about how the world works. Hoping to capture common sense knowledge, Cyc focuses on implicit knowledge that other AI platforms may take for granted. This is contrasted with facts one might find somewhere on the internet or retrieve via a search engine or Wikipedia. Cyc enables semantic reasoners to perform human-like reasoning and be less "brittle" when confronted with novel situations.

Douglas Lenat began the project in July 1984 at MCC, where he was Principal Scientist 1984–1994, and then, since January 1995, has been under active development by the Cycorp company, where he was the CEO.

Overview

The need for a massive symbolic artificial intelligence project of this kind was born in the early 1980s. Early AI researchers had ample experience over the previous 25 years with AI programs that would generate encouraging early results but then fail to "scale up"—move beyond the 'training set' to tackle a broader range of cases. Douglas Lenat and Alan Kay publicized this need,[1][2][3] and they organized a meeting at Stanford in 1983 to address the problem. The back-of-the-envelope calculations by Lenat, Kay, and their colleagues (including Marvin Minsky, Allen Newell, Edward Feigenbaum, and John McCarthy) indicated that that effort would require between 1,000 and 3,000 person-years of effort. Events within a year of that meeting enabled an effort of that scale to get underway.

The project began in July 1984 as the flagship project of the 400-person Microelectronics and Computer Technology Corporation (MCC), a research consortium started by two dozen large United States based corporations "to counter a then ominous Japanese effort in AI, the so-called "fifth-generation" project."[4] The US Government reacted to the Fifth Generation threat by passing the National Cooperative Research Act of 1984, which for the first time allowed US companies to "collude" on long-term high-risk high-payoff research, and MCC and Sematech sprang up to take advantage of that ten-year opportunity. MCC's first President and CEO was Bobby Ray Inman, former NSA Director and Central Intelligence Agency deputy director.

The objective of the Cyc project was to codify, in machine-usable form, the millions of pieces of knowledge that compose human common sense.[5] This entailed, along the way, (1) developing an adequately expressive representation language, CycL,[6] (2) developing an ontology spanning all human concepts down to some appropriate level of detail,[7] (3) developing a knowledge base on that ontological framework,[7] comprising all human knowledge about those concepts down to some appropriate level of detail, and (4) developing an inference engine exponentially faster than those used in then-conventional expert systems,[8][9] to be able to infer the same types and depth of conclusions that humans are capable of, given their knowledge of the world.

In slightly more detail:

  • The CycL representation language started as an extension of RLL[10][11] (the so-called Representation Language Language, developed in 1979–1980 by Lenat and his graduate student Russell Greiner while at Stanford University), but within a few years of the launch of the Cyc project it became clear that even representing a typical news story or novel or advertisement would require more than the expressive power of full first-order logic, namely second-order predicate calculus ("What is the relationship between rain and water?") and then even higher-level orders of logic including modal logic, reflection (enabling the system to reason about its progress so far, on a problem on which it's working), and context logic (enabling the system to reason explicitly about the contexts in which its various premises and conclusions might hold), non-monotonic logic, and circumscription. By 1989,[6] CycL had expanded in expressive power to higher-order logic (HOL).
    • Triplestore representations (which are akin to the Frame -and-slot representation languages of the 1970s from which RLL sprang) are widespread today in AI. It may be useful to cite a few examples that stress or break that type of representation, typical of the examples that forced the Cyc project to move from a triplestore representation to a much more expressive one during the period 1984–1989:[6] English sentences including negations ("Fred does not own a dog"), nested quantifiers ("Every American has a mother" means for-all x there-exists y... but "Every American has a President" means there-exists y such that for-all x...), nested modals such as "The United States believes that Germany wants NATO to avoid pursuing..." and it's even awkward to represent, in a Triplestore, relationships of arity higher than 2, such as "Los Angeles is between San Diego and San Francisco along US101."
  • Cyc's ontology grew to about 100,000 terms during the first decade of the project, to 1994, and as of 2017 contained about 1,500,000 terms. This ontology included:
    • 416,000 collections (types, sorts, natural kinds, which includes both types of things such as Fish and types of actions such as Fishing)
    • a little over a million individuals representing
      • 42,500 predicates (relations, attributes, fields, properties, functions),
      • about a million generally well known entities such as TheUnitedStatesOfAmerica, BarackObama, TheSigningOfTheUSDeclarationOfIndependence, etc.
      • An arbitrarily large number of additional terms are also implicitly present in the Cyc ontology, in the sense that there are term-denoting functions such as CalendarYearFn (when given the argument 2016, it denotes the calendar year 2016), GovernmentFn (when given the argument France it denotes the government of France), Meter (when given the argument 2016, it denotes a distance of 2.016 kilometers), and nestings and compositions of such function-denoting terms.
  • The Cyc knowledge base of general common-sense rules and assertions involving those ontological terms was largely created by hand axiom-writing; it grew to about 1 million in 1994, and as of 2017 is about 24.5 million and has taken well over 1,000 person-years of effort to construct.
    • It is important to understand that the Cyc ontological engineers strive to keep those numbers as small as possible, not inflate them, so long as the deductive closure of the knowledge base isn't reduced. Suppose Cyc is told about one billion individual people, animals, etc. Then it could be told 1018 facts of the form "Mickey Mouse is not the same individual as <Bullwinkle the Moose/Abraham Lincoln/Jennifer Lopez>". But instead of that, one could tell Cyc 10,000 Linnaean taxonomy rules followed by just 108 rules of the form "No mouse is a moose". And even more compactly, Cyc could instead just be given those 10,000 Linnaean taxonomy rules followed by just one rule of the form "For any two Linnaean taxons, if neither is explicitly known to be a supertaxon of the other, then they are disjoint". Those 10,001 assertions have the same deductive closure as the earlier-mentioned 1018 facts.
  • The Cyc inference engine design separates the epistemological problem (what content should be in the Cyc KB) from the heuristic problem (how Cyc could efficiently infer arguments hundreds of steps deep, in a sea of tens of millions of axioms). To do the former, the CycL language and well-understood logical inference might suffice. For the latter, Cyc used a community-of-agents architecture, where specialized reasoning modules, each with its own data structure and algorithm, "raised their hand" if they could efficiently make progress on any of the currently open sub-problems. By 1994 there were 20 such heuristic level (HL) modules;[8] as of 2017 there are over 1,050 HL modules.[12]
    • Some of these HL modules are very general, such as a module that caches the Kleene Star (transitive closure) of all the commonly-used transitive relations in Cyc's ontology.
    • Some are domain-specific, such as a chemical equation-balancer. These can be and often are an "escape" to (pointer to) some externally available program or webservice or online database, such as a module to quickly "compute" the current population of a city by knowing where/how to look that up.

CycL has a publicly released specification and dozens of HL modules were described in Lenat and Guha's textbook,[8] but the actual Cyc inference engine code, and the full list of 1000+ HL modules, is Cycorp-proprietary.[3]

The name "Cyc" (from "encyclopedia", pronounced [saɪk], like "syke") is a registered trademark owned by Cycorp. Access to Cyc is through paid licenses, but bona fide AI research groups are given research-only no-cost licenses (cf. ResearchCyc); as of 2017, over 600 such groups worldwide have these licenses.

Typical pieces of knowledge represented in the Cyc knowledge base are "Every tree is a plant" and "Plants die eventually". When asked whether trees die, the inference engine can draw the obvious conclusion and answer the question correctly.

Most of Cyc's knowledge, outside math, is only true by default. For example, Cyc knows that as a default parents love their children, when you're made happy you smile, taking your first step is a big accomplishment, when someone you love has a big accomplishment that makes you happy, and only adults have children. When asked whether a picture captioned "Someone watching his daughter take her first step" contains a smiling adult person, Cyc can logically infer that the answer is Yes, and "show its work" by presenting the step by step logical argument using those five pieces of knowledge from its knowledge base. These are formulated in the language CycL, which is based on predicate calculus and has a syntax similar to that of the Lisp programming language.

In 2008, Cyc resources were mapped to many Wikipedia articles.[13] Cyc is presently connected to Wikidata. Future plans may connect Cyc to both DBpedia and Freebase.

Much of the current work Cyc continues to be knowledge engineering, representing facts about the world by hand, and implementing efficient inference mechanisms on that knowledge. Increasingly, however, work at Cycorp involves giving the Cyc system the ability to communicate with end users in natural language, and to assist with the ongoing knowledge formation process via machine learning and natural-language understanding. Another large effort at Cycorp is building a suite of Cyc-powered ontological engineering tools to lower the bar to entry for individuals to contribute to, edit, browse, and query Cyc.

Like many companies, Cycorp has ambitions to use Cyc's natural-language processing to parse the entire internet to extract structured data; unlike all others, it is able to call on the Cyc system itself to act as an inductive bias and as an adjudicator of ambiguity, metaphor, and ellipsis. There are few, if any, systematic benchmark studies of Cyc's performance.

Knowledge base

The concept names in Cyc are CycL terms or constants.[6] Constants start with an optional #$ and are case-sensitive. There are constants for:

  • Individual items known as individuals, such as #$BillClinton or #$France.
  • Collections, such as #$Tree-ThePlant (containing all trees) or #$EquivalenceRelation (containing all equivalence relations). A member of a collection is called an instance of that collection.[8]
  • Functions, which produce new terms from given ones. For example, #$FruitFn, when provided with an argument describing a type (or collection) of plants, will return the collection of its fruits. By convention, function constants start with an upper-case letter and end with the string Fn.
  • Truth functions, which can apply to one or more other concepts and return either true or false. For example, #$siblings is the sibling relationship, true if the two arguments are siblings. By convention, truth function constants start with a lower-case letter. Truth functions may be broken down into logical connectives (such as #$and, #$or, #$not, #$implies), quantifiers (#$forAll, #$thereExists, etc.) and predicates.

Two important binary predicates are #$isa and #$genls. The first one describes that one item is an instance of some collection, the second one that one collection is a subcollection of another one. Facts about concepts are asserted using certain CycL sentences. Predicates are written before their arguments, in parentheses:

(#$isa #$BillClinton #$UnitedStatesPresident)

"Bill Clinton belongs to the collection of U.S. presidents."

(#$genls #$Tree-ThePlant #$Plant)

"All trees are plants."

(#$capitalCity #$France #$Paris)

"Paris is the capital of France."

Sentences can also contain variables, strings starting with ?. These sentences are called "rules". One important rule asserted about the #$isa predicate reads:

(#$implies
   (#$and
     (#$isa ?OBJ ?SUBSET)
     (#$genls ?SUBSET ?SUPERSET))
   (#$isa ?OBJ ?SUPERSET))

"If OBJ is an instance of the collection SUBSET and SUBSET is a subcollection of SUPERSET, then OBJ is an instance of the collection SUPERSET". Another typical example is

(#$relationAllExists #$biologicalMother #$ChordataPhylum #$FemaleAnimal)

which means that for every instance of the collection #$ChordataPhylum (i.e. for every chordate), there exists a female animal (instance of #$FemaleAnimal), which is its mother (described by the predicate #$biologicalMother).[8]

The knowledge base is divided into microtheories (Mt), collections of concepts and facts typically pertaining to one particular realm of knowledge. Unlike the knowledge base as a whole, each microtheory must be free from monotonic contradictions. Each microtheory is a first-class object in the Cyc ontology; it has a name that is a regular constant; microtheory constants contain the string Mt by convention. An example is #$MathMt, the microtheory containing mathematical knowledge. The microtheories can inherit from each other and are organized in a hierarchy: one specialization of #$MathMt is #$GeometryGMt, the microtheory about geometry.

Inference engine

An inference engine is a computer program that tries to derive answers from a knowledge base. The Cyc inference engine performs general logical deduction (including modus ponens, modus tollens, universal quantification and existential quantification).[14] It also performs inductive reasoning, statistical machine learning and symbolic machine learning, and abductive reasoning (but of course sparingly and using the existing knowledge base as a filter and guide).

Releases

OpenCyc

The first version of OpenCyc was released in spring 2002 and contained only 6,000 concepts and 60,000 facts. The knowledge base was released under the Apache License. Cycorp stated its intention to release OpenCyc under parallel, unrestricted licences to meet the needs of its users. The CycL and SubL interpreter (the program that allows users to browse and edit the database as well as to draw inferences) was released free of charge, but only as a binary, without source code. It was made available for Linux and Microsoft Windows. The open source Texai[15] project released the RDF-compatible content extracted from OpenCyc.[16] A version of OpenCyc, 4.0, was released in June 2012. OpenCyc 4.0 included much of the Cyc ontology at that time, containing hundreds of thousands of terms, along with millions of assertions relating the terms to each other; however, these are mainly taxonomic assertions, not the complex rules available in Cyc. The OpenCyc 4.0 knowledge base contained 239,000 concepts and 2,093,000 facts.

The main point of releasing OpenCyc was to help AI researchers understand what was missing from what they now call ontologies and knowledge graphs. It's useful and important to have properly taxonomized concepts like person, night, sleep, lying down, waking, happy, etc., but what's missing from the OpenCyc content about those terms, but present in the Cyc KB content, are the various rules of thumb that most of us share about those terms: that (as a default, in the ModernWesternHumanCultureMt) each person sleeps at night, sleeps lying down, can be woken up, is not happy about being woken up, and so on. That point does not require continually-updated releases of OpenCyc, so, as of 2017, OpenCyc is no longer available.

ResearchCyc

In July 2006, Cycorp released the executable of ResearchCyc 1.0, a version of Cyc aimed at the research community, at no charge. (ResearchCyc was in beta stage of development during all of 2004; a beta version was released in February 2005.) In addition to the taxonomic information contained in OpenCyc, ResearchCyc includes significantly more semantic knowledge (i.e., additional facts and rules of thumb) involving the concepts in its knowledge base; it also includes a large lexicon, English parsing and generation tools, and Java-based interfaces for knowledge editing and querying. In addition it contains a system for ontology-based data integration. As of 2017, regular releases of ResearchCyc continued to appear, with 600 research groups utilizing licenses around the world at no cost for noncommercial research purposes. As of December 2019, ResearchCyc is no longer supported. Cycorp expects to improve and overhaul tools for external developers over the coming years.

Applications

There have been over a hundred successful applications of Cyc;[17] listed here are a few mutually dissimilar instances:

Pharmaceutical Term Thesaurus Manager/Integrator

For over a decade, Glaxo has used Cyc to semi-automatically integrate all the large (hundreds of thousands of terms) thesauri of pharmaceutical-industry terms that reflect differing usage across companies, countries, years, and sub-industries.[18] This ontology integration task requires domain knowledge, shallow semantic knowledge, but also arbitrarily deep common sense knowledge and reasoning. Pharma vocabulary varies across countries, (sub-) industries, companies, departments, and decades of time. E.g., what’s a gel pak? What’s the “street name” for ranitidine hydrochloride? Each of these n controlled vocabularies is an ontology with approximately 300k terms. Glaxo researchers need to issue a query in their current vocabulary, have it translated into a neutral “true meaning”, and then have that transformed in the opposite direction to find potential matches against documents each of which was written to comply with a particular known vocabulary. They had been using a large staff to do that manually. Cyc is used as the universal interlingua capable of representing the union of all the terms’ “true meanings”, and capable of representing the 300k transformations between each of those controlled vocabularies and Cyc, thereby converting an problem into a linear one without introducing the usual sort of “telephone game” attenuation of meaning. Furthermore, creating each of those 300k mappings for each thesaurus is done in a largely automated fashion, by Cyc.

Terrorism Knowledge Base

The comprehensive Terrorism Knowledge Base was an application of Cyc in development that tried to ultimately contain all relevant knowledge about "terrorist" groups, their members, leaders, ideology, founders, sponsors, affiliations, facilities, locations, finances, capabilities, intentions, behaviors, tactics, and full descriptions of specific terrorist events. The knowledge is stored as statements in mathematical logic, suitable for computer understanding and reasoning.[19][20]

Cleveland Clinic Foundation

The Cleveland Clinic has used Cyc to develop a natural-language query interface of biomedical information, spanning decades of information on cardiothoracic surgeries.[21] A query is parsed into a set of CycL (higher-order logic) fragments with open variables (e.g., "this question is talking about a person who developed an endocarditis infection", "this question is talking about a subset of Cleveland Clinic patients who underwent surgery there in 2009", etc.); then various constraints are applied (medical domain knowledge, common sense, discourse pragmatics, syntax) to see how those fragments could possibly fit together into one semantically meaningful formal query; significantly, in most cases, there is exactly one and only one such way of incorporating and integrating those fragments.[22] Integrating the fragments involves (i) deciding which open variables in which fragments actually represent the same variable, and (ii) for all the final variables, decide what order and scope of quantification that variable should have, and what type (universal or existential). That logical (CycL) query is then converted into a SPARQL query that is passed to the CCF SemanticDB that is its data lake.

MathCraft

One Cyc application aims to help students doing math at a 6th grade level, helping them much more deeply understand that subject matter.[23] It is based on the experience that we often have thought we understood something, but only really understood it after we had to explain or teach it to someone else. Unlike almost all other educational software, where the computer plays the role of the teacher, this application of Cyc, called MathCraft,[24] has Cyc play the role of a fellow student who is always slightly more confused than you, the user, are about the subject. The user's role is to observe the Cyc avatar and give it advice, correct its errors, mentor it, get it to see what it's doing wrong, etc. As the user gives good advice, Cyc allows the avatar to make fewer mistakes of that type, hence, from the user's point of view, it seems as though the user has just successfully taught it something. This is a variation of learning by teaching.

Criticisms

The Cyc project has been described as "one of the most controversial endeavors of the artificial intelligence history".[25] Catherine Havasi, CEO of Luminoso, says that Cyc is the predecessor project to IBM's Watson.[26] Machine-learning scientist Pedro Domingos refers to the project as a "catastrophic failure" for several reasons, including the unending amount of data required to produce any viable results and the inability for Cyc to evolve on its own.[27]

Robin Hanson, a professor of economics at George Mason University, gives a more balanced analysis:

Of course the CYC project is open to criticism on its many particular choices. People have complained about its logic-like and language-like representations, about its selection of prototypical cases to build from (e.g., encyclopedia articles), about its focus on answering over acting, about how often it rebuilds vs. maintaining legacy systems, and about being private vs. publishing everything. But any large project like this would produce such disputes, and it is not obvious any of its choices have been seriously wrong. They had to start somewhere, and in my opinion they have now collected a knowledge base with a truly spectacular size, scope, and integration. Other architectures may well work better, but if knowing lots is anywhere near as important as Lenat thinks, I’d expect serious AI attempts to import CYC’s knowledge, translating it into a new representation. No other source has anywhere near CYC’s size, scope, and integration.[28]

A similar sentiment was expressed by Marvin Minsky: "Unfortunately, the strategies most popular among AI researchers in the 1980s have come to a dead end," said Minsky. So-called “expert systems,” which emulated human expertise within tightly defined subject areas like law and medicine, could match users’ queries to relevant diagnoses, papers and abstracts, yet they could not learn concepts that most children know by the time they are 3 years old. “For each different kind of problem,” said Minsky, “the construction of expert systems had to start all over again, because they didn’t accumulate common-sense knowledge.” Only one researcher has committed himself to the colossal task of building a comprehensive common-sense reasoning system, according to Minsky. Douglas Lenat, through his Cyc project, has directed the line-by-line entry of more than 1 million rules into a commonsense knowledge base.[29]

Gary Marcus, a professor of psychology and neural science at New York University and the cofounder of an AI company called Geometric Intelligence, says "it represents an approach that is very different from all the deep-learning stuff that has been in the news.”[30] This is consistent with Doug Lenat's position that "Sometimes the veneer of intelligence is not enough".[31]

Stephen Wolfram writes:

In the early days of the field of artificial intelligence, there were plenty of discussions of “knowledge representation”, with approaches based variously on the grammar of natural language, the structure of predicate logic or the formalism of databases. Very few large-scale projects were attempted (Doug Lenat’s Cyc being a notable counterexample).[32]

Marcus writes:

The field might well benefit if CYC were systematically described and evaluated. If CYC has solved some significant fraction of commonsense reasoning, then it is critical to know that, both as a useful tool, and as a starting point for further research. If CYC has run into difficulties, it would be useful to learn from the mistakes that were made. If CYC is entirely useless, then researchers can at least stop worrying about whether they are reinventing the wheel.[33]

Every few years since it began publishing (1993), there is a new Wired Magazine article about Cyc,[34][29][35] some positive and some negative (including one issue[36] which contained one of each).

Notable employees

This is a list of some of the notable people who work or have worked on Cyc either while it was a project at MCC (where Cyc was first started) or Cycorp.


See also


References

  1. Lenat, Douglas B.; Brown, John Seely (1984-08-01). "Why am and eurisko appear to work". Artificial Intelligence 23 (3): 269–294. doi:10.1016/0004-3702(84)90016-X. 
  2. Lenat, Douglas B.; Borning, Alan; McDonald, David; Taylor, Craig; Weyer, Steven (1983). "Knoesphere: Building Expert Systems with Encyclopedic Knowledge". Proceedings of the Eighth International Joint Conference on Artificial Intelligence - Volume 1. IJCAI'83: 167–169. http://dl.acm.org/citation.cfm?id=1623373.1623410. 
  3. 3.0 3.1 Lenat, Douglas. "Hal's Legacy: 2001's Computer as Dream and Reality. From 2001 to 2001: Common Sense and the Mind of HAL". Cycorp, Inc.. https://www.cyc.com/wp-content/uploads/2019/07/img-615153705-0001-1.pdf. 
  4. Wood, Lamont (2002). "The World in a Box". Scientific American 286 (1): 18–19. doi:10.1038/scientificamerican0102-18. Bibcode2002SciAm.286a..18W. 
  5. Lenat, Doug; Prakash, Mayank; Shepherd, Mary (January 1986). "CYC: Using Common Sense Knowledge to Overcome Brittleness and Knowledge Acquistion [sic Bottlenecks"]. AI Magazine 6 (4): 65–85. ISSN 0738-4602. http://dl.acm.org/citation.cfm?id=13432.13435. 
  6. 6.0 6.1 6.2 6.3 Lenat, Douglas B.; Guha, R. V. (June 1991). "The Evolution of CycL, the Cyc Representation Language". SIGART Bull. 2 (3): 84–87. doi:10.1145/122296.122308. ISSN 0163-5719. 
  7. 7.0 7.1 Lenat, Douglas B.; Guha, R. V.; Pittman, Karen; Pratt, Dexter; Shepherd, Mary (August 1990). "Cyc: Toward Programs with Common Sense". Commun. ACM 33 (8): 30–49. doi:10.1145/79173.79176. ISSN 0001-0782. 
  8. 8.0 8.1 8.2 8.3 8.4 Lenat, Douglas B.; Guha, R. V. (1989). Building Large Knowledge-Based Systems; Representation and Inference in the Cyc Project (1st ed.). Boston, MA, USA: Addison-Wesley Longman Publishing Co., Inc.. ISBN 978-0201517521. https://dl.acm.org/citation.cfm?id=575523. 
  9. Elkan, Charles; Greiner, Russell (1993-05-01). "Building large knowledge-based systems: Representation and inference in the cyc project: D.B. Lenat and R.V. Guha". Artificial Intelligence 61 (1): 41–52. doi:10.1016/0004-3702(93)90092-P. 
  10. "A Representation Language Language". http://www.aaai.org/Library/AAAI/1980/aaai80-047.php. 
  11. Russell, Greiner (October 1980) (in en). RLL-1: A Representation Language Language (Report). https://apps.dtic.mil/sti/citations/ADA096510. 
  12. "Schedule - Knowledge Representation and Reasoning: Integrating Symbolic and Neural Approaches". https://sites.google.com/site/krr2015/home/schedule. 
  13. "Integrating Cyc and Wikipedia: Folksonomy meets rigorously defined common-sense". http://researchcommons.waikato.ac.nz/bitstream/handle/10289/2150/Medelyan_Legg_Wikiai08.pdf?sequence=1. 
  14. "cyc Inference engine". https://www.cyc.com/archives/service/cyc-inference-engines. 
  15. "The open source Texai project". http://www.texai.org. 
  16. "Texai SourceForge project files". http://sourceforge.net/project/showfiles.php?group_id=176781. 
  17. "Cycorp Products" (in en-US). https://www.cyc.com/products. 
  18. HILTZIK, MICHAEL A. (2001-06-21). "Birth of a Thinking Machine" (in en-US). Los Angeles Times. ISSN 0458-3035. http://articles.latimes.com/2001/jun/21/news/mn-12881. 
  19. Chris Deaton; Blake Shepard; Charles Klein; Corrinne Mayans; Brett Summers; Antoine Brusseau; Michael Witbrock; Doug Lenat (2005). "The Comprehensive Terrorism Knowledge Base in Cyc". Proceedings of the 2005 International Conference on Intelligence Analysis. 
  20. Template:Cite tech report
  21. "Case Study: A Semantic Web Content Repository for Clinical Research" (in en-US). http://www.w3.org/2001/sw/sweo/public/UseCases/ClevelandClinic/. 
  22. Lenat, Douglas; Witbrock, Michael; Baxter, David; Blackstone, Eugene; Deaton, Chris; Schneider, Dave; Scott, Jerry; Shepard, Blake (2010-07-28). "Harnessing Cyc to Answer Clinical Researchers' Ad Hoc Queries" (in en). AI Magazine 31 (3): 13. doi:10.1609/aimag.v31i3.2299. ISSN 0738-4602. 
  23. Lenat, Douglas B.; Durlach, Paula J. (2014-09-01). "Reinforcing Math Knowledge by Immersing Students in a Simulated Learning-By-Teaching Experience" (in en). International Journal of Artificial Intelligence in Education 24 (3): 216–250. doi:10.1007/s40593-014-0016-x. ISSN 1560-4292. 
  24. "Mathcraft by Cycorp". http://www.mathcraft.ai. 
  25. Bertino, Piero & Zarria 2001, p. 275
  26. Havasi, Catherine (Aug 9, 2014). "Who's Doing Common-Sense Reasoning And Why It Matters" (in en). TechCrunch. https://techcrunch.com/2014/08/09/guide-to-common-sense-reasoning-whos-doing-it-and-why-it-matters/. 
  27. Domingos, Pedro (2015). The Master Algorithm: How the Quest for the Ultimate Learning Machine Will Remake Our World. Basic Books. ISBN 978-0465065707. https://archive.org/details/masteralgorithmh0000domi. 
  28. Robin Hanson (December 1, 2008). "Overcoming Bias : I Heart CYC" (in en-US). http://www.overcomingbias.com/2008/12/i-heart-cyc.html. 
  29. 29.0 29.1 Baard, Mark (May 13, 2003). "AI Founder Blasts Modern Research" (in en-US). WIRED. https://www.wired.com/2003/05/ai-founder-blasts-modern-research/. Retrieved 2017-11-29. 
  30. Knight, Will (Mar 14, 2016). "An AI that spent 30 years learning some common sense is ready for work" (in en). MIT Technology Review. https://www.technologyreview.com/s/600984/an-ai-with-30-years-worth-of-knowledge-finally-goes-to-work/. 
  31. Doug Lenat (May 15, 2017). "Sometimes the Veneer of Intelligence is Not Enough | CogWorld" (in en). https://cognitiveworld.com/articles/sometimes-veneer-intelligence-not-enough. 
  32. "Computational Law, Symbolic Discourse and the AI Constitution—Stephen Wolfram Blog" (in en). October 12, 2016. http://blog.stephenwolfram.com/2016/10/computational-law-symbolic-discourse-and-the-ai-constitution/. 
  33. Davis, Ernest; Marcus, Gary (2015). "Commonsense reasoning and commonsense knowledge in artificial intelligence". Communications of the ACM 58 (9): 92–103. doi:10.1145/2701413. 
  34. Goldsmith, Jeffrey (Apr 1, 1994). "CYC-O" (in en-US). WIRED. https://www.wired.com/1994/04/cyc-o/. Retrieved 2017-11-29. 
  35. Cade Metz (March 25, 2016). "One Genius' Lonely Crusade to Teach a Computer Common Sense" (in en-US). WIRED. https://www.wired.com/2016/03/doug-lenat-artificial-intelligence-common-sense-engine/. Retrieved 2017-11-29. 
  36. Wired Staff (Nov 1, 1998). "The Wired 25" (in en-US). WIRED. https://www.wired.com/1998/11/wired25/. Retrieved 2017-11-29. 

Further reading

External links