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Published byGrace Golden Modified over 9 years ago
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Artificial Intelligence (AI) Can Machines Think?
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Advantage computer: Calculate Communicate Process information Storage and recall of facts Make decisions using established rules of logic Consistency/Rationality – e.g. rejection of anecdotal evidence
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Advantage human: Perceive Reason – Not all possibilities can be anticipated, and therefore programmed Recognize patterns – Unless a specific pattern has been anticipated and ‘programmed’, a computer can’t act on it Ambiguity Application of knowledge (child describing his toys)
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So, can they think?? The “Turing Test” – Developed by Alan Turing (1950) – A person sits at a computer and types questions into a terminal. – If a computer were truly “intelligent”, the questioner would not be able to determine whether the responder was a human or a computer – To date, no computer has even come close – Some still consider the Turing Test to be the best determinant of AI. Other researchers favor a more lenient definition.
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Defining AI Hard to define Many disagree “…ability to perceive, reason, and act” “…do things which, at the moment, people are better” etc
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Was Deep Blue “intelligent”? Deep Blue was a computer developed by IBM that defeated Kasparov in chess. – Rules were clearly defined – Objectives were unmistakable – Searching: Winning typically goes to the player who can sift through the greatest number of possibilities and outcomes – Recall: Pattern recognition of board patterns and best strategies to employ given a specific pattern Humans may have the edge here… – $25 chess programs can defeat the greatest players in the world
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Language Translation Still work to be done… Shakespeare: “The spirit is willing, but the flesh is weak” Computer: “The wine is agreeable, but the meat is rotten” “Out of sight, out of mind” Computer: “Invisible idiot”
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Syntax vs Semantics Language rarely limits itself to a consistent set of rules and structure – There are always “exceptions” Sometimes, understanding the true, underlying meaning of a single word can require a great deal of knowledge Syntax: the ‘rules’ of a language, definitions of words Semantics: the underlying meanings – Expressions – Idioms – Slang – Visual cues – Ambiguity: e.g. All that glitters is not gold. – Etc
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Practical applications of AI Knowledge bases Expert systems
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AI techniques Heuristics Pattern recognition Machine learning
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Knowledge vs Facts Facts are details that are typically quantifiable and reproducible Knowledge is the ability to form relationships by using facts – Humans are considerably better at inferring things – Computer require tremendous input of data to accomplish this same task, and even then, will inevitably fall short at some point
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Knowledge Base A computer KB will 1.Incorporate a database of facts 2.Incorporate a series of programmed rules 3.Attempt to derive new facts by applying steps 1 and 2
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Expert Systems “A software program designed to replicate the decision making process of a human expert” A collection of specialized knowledge where facts and appropriate actions are obtained from expert sources and programmed into a database Usually involves a series of “If Then” question and answers.
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Algorithms An expert system will frequently use a series of algorithms to provide solutions to a given question Here are a couple of examples of well- established medical algorithms:
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Difficult Airway Algorithm
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ACLS Algorithm – Cardiac Arrest
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Pulmonary HTN Algorithm:
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Fuzzy Logic Uncertainty is an inevitable part of the human experience Computers do not handle ambiguity well Computers use likelihood (e.g. percentages) – derived from as much factual data as possible – to come up with the “best” solution
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Expert Systems - examples Training – Teaching “difficult airway” procedure to anesthesiology residents – “What do you do next?” Routine / repetitive task work – Monitoring millions of credit card accounts for unusual activity Expertise when human help is not available – PDAs with medical databases Error reduction – Checking for drug interactions in an EMR
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