Artificial Intelligence (AI) Can Machines Think?.
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Transcript of Artificial Intelligence (AI) Can Machines Think?.
Artificial Intelligence (AI)
Can Machines Think?
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
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)
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.
Defining AI
• Hard to define• Many disagree• “…ability to perceive, reason, and act”• “…do things which, at the moment, people are
better”• etc
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
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”
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
Practical applications of AI
• Knowledge bases• Expert systems
AI techniques
• Heuristics• Pattern recognition• Machine learning
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
Knowledge Base
• A computer KB will 1. Incorporate a database of facts2. Incorporate a series of programmed rules3. Attempt to derive new facts by applying steps
1 and 2
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 “IfThen” question and answers.
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:
Difficult AirwayAlgorithm
ACLS Algorithm – Cardiac Arrest
Pulmonary HTN Algorithm:
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
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