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1 4 questions (Revisited) What are our underlying assumptions about intelligence? What kinds of techniques will be useful for solving AI problems? At what.

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Presentation on theme: "1 4 questions (Revisited) What are our underlying assumptions about intelligence? What kinds of techniques will be useful for solving AI problems? At what."— Presentation transcript:

1 1 4 questions (Revisited) What are our underlying assumptions about intelligence? What kinds of techniques will be useful for solving AI problems? At what level of detail are we trying to model human intelligence? How will we know when we have succeeded in building an intelligent program?

2 2 Symbolic vs. Subsymbolic AI Subsymbolic AI: Model intelligence at a level similar to the neuron. Let such things as knowledge and planning emerge. Symbolic AI: Model such things as knowledge and planning in data structures that make sense to the programmers that build them. (blueberry (isa fruit) (shape round) (color purple) (size.4 inch))

3 3 Interest in Subsymbolic AI 40 50 60 70 80 90 00 10

4 4 Low-level (Sensory and Motor) Processing and the Resurgence of Subsymbolic Systems Computer vision Motor control Subsymbolic systems perform cognitive tasks Detect credit card fraud The backpropagation algorithm eliminated a formal weakness of earlier systems Neural networks learn.

5 5 Turing test Experimenter AI system Control

6 6 Eliza, 1965 HUMAN: You are like my father in some ways. ELIZA: What resemblance do you see? HUMAN: You are not very aggressive, but I think you don’t want me to notice that. ELIZA: What makes you think I am not very aggressive? HUMAN: You don’t argue with me. ELIZA: Why do you think I don’t argue with you? HUMAN: You are afraid of me. ELIZA: Does it please you to believe I am afraid of you? HUMAN: My father is afraid of everybody. ELIZA: What else comes to mind when you think of your father? HUMAN: Bullies. http://www-ai.ijs.si/eliza/

7 7 The Chinese Room Set of rules, in English, for transforming phrases Chinese Writing is given to the person Correct Responses She does not know Chinese

8 8 The Chinese Room Scenario An individual is locked in a room and given a batch of Chinese writing. The person locked in the room does not understand Chinese. Next she is given more Chinese writing and a set of rules (in English which she understands) on how to collate the first set of Chinese characters with the second set of Chinese characters. If the person becomes good at manipulating the Chinese symbols and the rules are good enough, then to someone outside the room it appears that the person understands Chinese.

9 9 The Chinese Room (cont.) Searle's, who developed the argument, point is that she doesn't really understand Chinese, she really only follows a set of rules. Following this argument, a computer could never be truly intelligent, it is only manipulates symbols. The computer does not understand the semantic context. Searle’s criteria is “intentionality,” the entity must be intentionally exhibiting the behavior, not simply following a set of rules. Intentionality is as difficult to define as intelligence. Searle excludes ‘weak AI’ from his argument against the possibility of AI.

10 10 Philosophical extremes in AI Weak AI vs. Strong AI  Weak AI believes that machine intelligence need only mimic the behavior of human intelligence  Strong AI demands that machine intelligence must mimic the internal processes of human intelligence, not just the external behavior

11 11 Newell and Simon Prediction In 1997, Deep Blue beat Gary Kasparov.

12 12 Why Did They Get it Wrong? They failed to understand at least three key things: The need for knowledge (lots of it) Scalability and the problem of complexity and exponential growth The need to perceive the world

13 13 Scalability Solving hard problems requires search in a large space. To play master-level chess requires searching about 8 ply deep. So about 35 8 nodes must be examined.

14 14 Exponential Growth

15 15 But Chess is Easy The rules are simple enough to fit on one page The branching factor is only 35.

16 16 A Harder One John saw a boy and a girl with a red wagon with one blue and one white wheel dragging on the ground under a tree with huge branches.

17 17 How Bad is the Ambiguity? Kim (1) Kim and Sue (1) Kim and Sue or Lee (2) Kim and Sue or Lee and Ann (5) Kim and Sue or Lee and Ann or Jon (14) Kim and Sue or Lee and Ann or Jon and Joe (42) Kim and Sue or Lee and Ann or Jon and Joe or Zak (132) Kim and Sue or Lee and Ann or Jon and Joe or Zak and Mel (469) Kim and Sue or Lee and Ann or Jon and Joe or Zak and Mel or Guy (1430) Kim and Sue or Lee and Ann or Jon and Joe or Zak and Mel or Guy and Jan (4862)

18 18 The Differences Between Us and Them Emotions Understanding Consciousness

19 19 Today: Computer as Artist Two paintings done by Harold Cohen’s Aaron program:

20 20 Solving AI Problems Define and analyse the problem –What knowledge is necessary? Choose a problem-solving technique e.g. Chess –What information do we need to represent in a chess-playing program?

21 21 ‘State Space’ Initial state operators Goal state(s) rkbkiqbkr pppppppp PPPPPPPP KBKIQBKRR pp k q

22 22 The Water Jugs Problem 2 jugs –4 gallon –3 gallon How can you get exactly 2 gallons into the 4 gallon jug? Possible operators: 1.Empty jug 2.Fill jug from tap 3.Pour contents from one jug into another 4 3


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