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CS 2710, ISSP 2610 Foundations of Artificial Intelligence

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Title: CS 2710, ISSP 2610 Foundations of Artificial Intelligence


1
CS 2710, ISSP 2610Foundations of Artificial
Intelligence
  • introduction

2
Outline
  • Course information and syllabus
  • Introduction to AI

3
4 Views of AI
4
Basic Framework
  • Getting computers to do the right thing based on
    their circumstances and what they know.

5
Applied Areas of AI
  • Game playing
  • Speech and language processing
  • Expert reasoning and theorem proving
  • Planning and scheduling
  • Vision
  • Robotics

6
Some Examples
  • Playing chess
  • Driving on the highway
  • Mowing the lawn
  • Answering questions
  • Recognizing speech
  • Diagnosing diseases
  • Translating languages

7
AI is a synergy among
  • Philosophy Can a machine think? What are
    knowledge and belief? Logic and reasoning
  • psychology and cognitive science problem solving
    skills
  • Linguistics syntax, semantics, pragmatics

8
Synergy Among
  • Computer science and engineering complexity
    theory, algorithms, logic and inference,
    programming languages, system building,
  • Mathematics, physics statistical modeling,
    complex systems, chaos, game theory,
  • Economics decision theory,
  • Neurobiology how does the brain process
    information?...

9
Whats involved in intelligence?
  • Ability to interact with the real world
  • Perceive, understand, and act
  • Reasoning and planning
  • Modeling external world
  • Problem solving, planning, decision making
  • Learning and adaptation

10
Goals in AI
  • Engineering goal solve real-world problems.
    Build systems that exhibit intelligent behavior
  • Scientific goal To understand what kinds of
    computational mechanisms and knowledge are needed
    for modeling intelligent behavior

11
Turing Test (1950)
  • Interrogator asks questions of two agents who are
    out of sight and hearing. One is person the
    other is a computer.
  • If the interrogator cant reliably distinguish
    between human and computer, then the computer is
    deemed intelligent

12
Eliza (Joseph Weizenbaum in the last 60s)
  • Takes the role of a psychoanalyst in a
    psychiatric interview.
  • Sample dialog and modern Turning test

13
Turing Test
  • Pros Objective evaluation. Focus on behavior
    (how could we evaluate whether a computer thinks
    like a human?)
  • Cons as much a test of the judge as it is of
    the machine promotes development of artificial
    con artists (Newel and Simon 1976). But.

14
Passing the Test
  • Free conversation is very hard
  • But people are prone towards attributing human
    qualities to technology

15
Implications
  • Whether or not we set out to build intelligent
    interactive agents, people expect computers to
    act like people

16
Challenges Ahead
  • Systems lack generality and adaptability
  • They cant easily switch contexts
  • Key problems knowledge acquisition, lack of
    commonsense knowledge, lack of sufficient data,
    what aspects of context are relevant?

17
Example
  • Information extraction example consider
    brittleness and what we could do about it

18
In-Class Discussion Questions
  • This file
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