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04/24 --- AI: Science or Engineering?
04/24 --- AI: Science or Engineering?

Conceptual Parallels Between Philosophy of Science and
Conceptual Parallels Between Philosophy of Science and

... has been articulated in various forms by Pascal and Leibniz, among others (Dreyfus 53). The basic notion of computation as the rule - governed operations of a system composed of simple elements is a powerful idea. With the advent of digital computers around 1950, logicians, psychologists, and comput ...
AAAI 2001 Spring Symposium Series Reports
AAAI 2001 Spring Symposium Series Reports

... of researchers from fields such as planThe American Association for Artificial Intelligence, in cooperation with Stanford University’s Department of Computer Science, presented the 2001 Spring Symposium Series on Monday through Wednesday, 26 to 28 March 2001, at Stanford University. The titles of th ...
Specific expert systems
Specific expert systems

... be performed by a human expert. For example, there are expert systems that can diagnose human illnesses, make financial forecasts, and schedule routes for delivery vehicles. Some expert systems are designed to take the place of human experts, while others are designed to aid them. To design an exper ...
Computational Intelligence and Active Networks
Computational Intelligence and Active Networks

... surface fitting problems. There are several types of neurofuzzy system, and these are categorized by the type of membership functions; the two most common are B-splines and Gaussians. By regarding these fuzzy systems as types of neural networks, the role of the membership function in determining the ...
Slides
Slides

... Early AI programs, including Samuel’s checkers program, Newell & Simon’s Logic Theorist, Gelernter’s Geometry Engine Dartmouth meeting: “Artificial Intelligence” adopted Robinson’s complete algorithm for logical reasoning AI discovers computational complexity Neural network research almost disappear ...
T Preface
T Preface

... planning community. As with all previous AIPS conferences the papers have been selected on technical merit but it is gratifying to see the range of papers which have appeared. The papers include practical algorithms for achieving efficiency in planning, formal results on the completeness and complex ...
03 Lecture CSC462
03 Lecture CSC462

... “I believe that in about fifty years’ time it will be possible to programme computers, with a storage capacity of about 109, to make them play the imitation game so well that an average interrogator will not have more than 70 per cent chance of making the right identification after 5 minutes of que ...
A Survey of Artificial Intelligence in Software Engineering
A Survey of Artificial Intelligence in Software Engineering

... Software Agents are typically small intelligent systems that cooperate to reach a common goal. These agents are a relatively new area where research from KI and SE intersects. From the AI side the focus in this field lies on even more intelligent and autonomous systems to solve more complex problems ...
the ethics of artificial intelligence
the ethics of artificial intelligence

... explained what artificial intelligence really is. Artificial intelligence is academic field of study which studies how to create machines and computer software that are capable of intelligent behaviour. In some definitions it could be found that AI is science and engineering of making intelligent ma ...
The Symbolic vs Subsymbolic Debate
The Symbolic vs Subsymbolic Debate

... (substitutable) grapheme – phoneme mappings and then plug them in (modulo contextual influences). ...
CSC384: Intro to Artificial Intelligence
CSC384: Intro to Artificial Intelligence

... specialized degrees of intelligence. ƒ Formalisms and algorithmic ideas have been identified as being useful in the construction of these “intelligent” systems. ƒ Together these formalisms and algorithms form the foundation of our attempt to understand intelligence as a computational process. ƒ In t ...
AAAI-07 / IAAI-07 Exhibitor Information
AAAI-07 / IAAI-07 Exhibitor Information

... On behalf of AAAI, we invite you to exhibit at the Twenty-Second AAAI Conference on Artificial Intelligence and the Nineteenth Conference on Innovative Applications of Artificial Intelligence, to be held July 22 - 26, 2007 in Vancouver, British Columbia, Canada. Each year the AAAI conference brings ...
323-670 ปัญญาประดิษฐ์ (Artificial Intelligence)
323-670 ปัญญาประดิษฐ์ (Artificial Intelligence)

... It can easily be modified to correct errors and to reflect changes in the world. It can be used in many situations even if it is not totally accurate or complete. It can use to narrow the range of possibilities that must usually be considered. ...
Yesterday Today, and Tomorrow of AI applications
Yesterday Today, and Tomorrow of AI applications

... ideas by mechanical means •17th first computer Pascal and Leibnitz •1921 robot (Karel Capek) •1945 ENIAC Electronic Numerical Integrator and Calculator •1945 – 1956 cybernetics, neural nets – learning (Hoebbs) •1950 Turing test to measure machine intelligence •1956 Logic theorist first AI pg A. Newe ...
Intelligent Agents
Intelligent Agents

... The extent to which we regard something as behaving in an intelligent manner is determined as much by our own state of mind and training as by the properties of the object under consideration. If we are able to explain and predict its behavior we have little temptation to imagine intelligence. With ...
Multiagent models for partially observable environments
Multiagent models for partially observable environments

... Communication • Implicit or explicit. • Implicit communication can be modeled in “non-communicative” frameworks. • Explicit communication Goldman and Zilberstein (2004): ◮ informative messages ◮ commitments ◮ rewards/punishments • Semantics: ◮ Fixed: optimize joint policy given semantics. ◮ General ...
Knowledge Representation - Computer and Information Science
Knowledge Representation - Computer and Information Science

... another approach is to model intelligence in terms of "rationality" and logic. • The “thinking rationally” approach to AI uses symbolic logic to capture the laws of rational thought as symbols that can be manipulated. • Reasoning involves manipulating the symbols according to well-defined rules, kin ...
323-670 ปัญญาประดิษฐ์ (Artificial Intelligence)
323-670 ปัญญาประดิษฐ์ (Artificial Intelligence)

... The Prolog programming language was developed by Alain Colmerauer. Edinburgh Freddy Assembly Robot: a versatile computer-controlled assembly system. Ted Shortliffe's PhD dissertation on the MYCIN program (Stanford) demonstrated a very practical rule-based approach to medical diagnoses, even in the p ...
173 A MOBILE EXPERT SYSTEM APPLICATION FOR SOLVING
173 A MOBILE EXPERT SYSTEM APPLICATION FOR SOLVING

... unnecessarycomplexity into their designs. As a result, mobile apps present a more popular interface forinteraction with business systems than using web applications via Web Browser [1]. This technology shared between humans rapidly and still in development, there are numerous applications that allow ...
Strategic Decision Making
Strategic Decision Making

... • HD’s technology budget is more than 2% of its revenue, far above the industry average. More than 50% of the budget is devoted to developing new technologies – information sharing, business intelligence and enhancing decision making. It has reduced operating costs by $40 million through using strat ...
What is rule-based reasoning
What is rule-based reasoning

... expertise based on the facts of a given situation. Most AI tools contain some form of deductive or inductive reasoning capability. What is an expert system? Simply put, an expert system represents information and searches for patterns in that information. They are known as expert systems because the ...
CPSC 444 Artificial Intelligence What Is AI?
CPSC 444 Artificial Intelligence What Is AI?

... – data can supplant algorithm in some ways – e.g. “plant” - flora or factory? • can learn to high accuracy from dictionary definitions of the two senses and a very large corpus of unannotated text ...
Some Philosophical Problems from the standpoint of
Some Philosophical Problems from the standpoint of

... representing them in another form. But representation of many problems was awkward enough for the GPS to solve it. – Newell and Ernst (1965) view that the class of problems the problem solver can solve depends on its ability to represent the external to its internal. The division of problem solver i ...
The return of the machinery question
The return of the machinery question

... allows systems to learn and improve by crunching lots of examples rather than being explicitly programmed, is already being used to power internet search engines, block spam e-mails, suggest e-mail replies, translate web pages, recognise voice commands, detect credit-card fraud and steer self-drivin ...
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AI winter

In the history of artificial intelligence, an AI winter is a period of reduced funding and interest in artificial intelligence research. The term was coined by analogy to the idea of a nuclear winter. The field has experienced several hype cycles, followed by disappointment and criticism, followed by funding cuts, followed by renewed interest years or decades later. There were two major winters in 1974–80 and 1987–93 and several smaller episodes, including: 1966: the failure of machine translation, 1970: the abandonment of connectionism, 1971–75: DARPA's frustration with the Speech Understanding Research program at Carnegie Mellon University, 1973: the large decrease in AI research in the United Kingdom in response to the Lighthill report, 1973–74: DARPA's cutbacks to academic AI research in general, 1987: the collapse of the Lisp machine market, 1988: the cancellation of new spending on AI by the Strategic Computing Initiative, 1993: expert systems slowly reaching the bottom, and 1990s: the quiet disappearance of the fifth-generation computer project's original goals.The term first appeared in 1984 as the topic of a public debate at the annual meeting of AAAI (then called the ""American Association of Artificial Intelligence""). It is a chain reaction that begins with pessimism in the AI community, followed by pessimism in the press, followed by a severe cutback in funding, followed by the end of serious research. At the meeting, Roger Schank and Marvin Minsky—two leading AI researchers who had survived the ""winter"" of the 1970s—warned the business community that enthusiasm for AI had spiraled out of control in the '80s and that disappointment would certainly follow. Three years later, the billion-dollar AI industry began to collapse.Hypes are common in many emerging technologies, such as the railway mania or the dot-com bubble. An AI winter is primarily a collapse in the perception of AI by government bureaucrats and venture capitalists. Despite the rise and fall of AI's reputation, it has continued to develop new and successful technologies. AI researcher Rodney Brooks would complain in 2002 that ""there's this stupid myth out there that AI has failed, but AI is around you every second of the day."" In 2005, Ray Kurzweil agreed: ""Many observers still think that the AI winter was the end of the story and that nothing since has come of the AI field. Yet today many thousands of AI applications are deeply embedded in the infrastructure of every industry."" He added: ""the AI winter is long since over.""
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