Artificial intelligence COS 116, Spring 2010 Adam Finkelstein.

Slides:



Advertisements
Similar presentations
Approaches, Tools, and Applications Islam A. El-Shaarawy Shoubra Faculty of Eng.
Advertisements

Chapter 09 AI techniques in different game genres (Puzzle/Card/Shooting)
Information and Software Technology
Artificial Intelligence By: David Hunt Lee Evans Jonathan Moreton Rachel Moss.
Section 2.3 I, Robot Mind as Software.
Artificial intelligence (and Searle’s objection) COS 116: 4/26/2011 Sanjeev Arora.
Artificial intelligence. I believe that in about fifty years' time it will be possible, to programme computers, with a storage capacity of about 10.
Artificial intelligence COS 116, Spring 2012 Adam Finkelstein.
An Introduction to Artificial Intelligence Presented by : M. Eftekhari.
Artificial Intelligence
Module 14 Thought & Language. INTRODUCTION Definitions –Cognitive approach method of studying how we process, store, and use information and how this.
1 Lecture 35 Brief Introduction to Main AI Areas (cont’d) Overview  Lecture Objective: Present the General Ideas on the AI Branches Below  Introduction.
Introduction to Cognitive Science Philosophy Nov 2005 :: Lecture #1 :: Joe Lau :: Philosophy HKU.
Shailesh Appukuttan : M.Tech 1st Year CS344 Seminar
Artificial Intelligence u What are we claiming when we talk about AI? u How are Turing Machines important? u How can we determine whether a machine can.
The Turing Test What Is Turing Test? A person and a computer, being separated in two rooms, answer the tester’s questions on-line. If the interrogator.
CS 357 – Intro to Artificial Intelligence  Learn about AI, search techniques, planning, optimization of choice, logic, Bayesian probability theory, learning,
Acting Humanly: The Turing test (1950) “Computing machinery and intelligence”:   Can machine’s think? or Can machines behave intelligently? An operational.
Introduction to Cognitive Science Lecture #1 : INTRODUCTION Joe Lau Philosophy HKU.
Overview and History of Cognitive Science
Overview and History of Cognitive Science. How do minds work? What would an answer to this question look like? What is a mind? What is intelligence? How.
Random Administrivia In CMC 306 on Monday for LISP lab.
Welcome to…. Psychology 85 Introduction to Cognitive Science Summer 2015 Instructor: Sean McAuliffe T.A.: Carolyn Bufford.
CPSC 322 Introduction to Artificial Intelligence September 10, 2004.
Rohit Ray ESE 251. What are Artificial Neural Networks? ANN are inspired by models of the biological nervous systems such as the brain Novel structure.
CPSC 171 Artificial Intelligence Read Chapter 14.
1 AI and Agents CS 171/271 (Chapters 1 and 2) Some text and images in these slides were drawn from Russel & Norvig’s published material.
C. 2008, Pearson Allyn & Bacon Introduction to Cognition Chapter 1.
CSCI 4410 Introduction to Artificial Intelligence.
The Thinking Machine Based on Tape. Computer Has Some Intelligence Now Playing chess Solving calculus problems Other examples:
Artificial Intelligence Introduction (2). What is Artificial Intelligence ?  making computers that think?  the automation of activities we associate.
Chapter 14: Artificial Intelligence Invitation to Computer Science, C++ Version, Third Edition.
The AI Challenge: Who are we? Images Copyright Twentieth Century Fox, Paramount, Sony;
Game AI Fundamentals. What is Artificial Intelligence (AI)? Not easy to answer… “Ability of a computer or other machine to perform those activities that.
计算机科学概述 Introduction to Computer Science 陆嘉恒 中国人民大学 信息学院
 Prominent AI Reseacher  Colleague of Alan Turing at Bletchley Park  1992 Paper: ◦ Turing’s Test and Conscious Thought Turing’s Test and Conscious.
11 C H A P T E R Artificial Intelligence and Expert Systems.
Artificial Intelligence: Prospects for the 21 st Century Henry Kautz Department of Computer Science University of Rochester.
Psy Introduction1 Introduction Psychology 612.
Artificial Intelligence Introductory Lecture Jennifer J. Burg Department of Mathematics and Computer Science.
 The most intelligent device - “Human Brain”.  The machine that revolutionized the whole world – “computer”.  Inefficiencies of the computer has lead.
Presented by Scott Lichtor An Introduction to Neural Networks.
A New Artificial Intelligence 5 Kevin Warwick. Philosophy of AI II Here we will look afresh at some of the arguments Here we will look afresh at some.
Artificial Intelligence By Michelle Witcofsky And Evan Flanagan.
How Solvable Is Intelligence? A brief introduction to AI Dr. Richard Fox Department of Computer Science Northern Kentucky University.
Introduction to Machine Learning Kamal Aboul-Hosn Cornell University Chess, Chinese Rooms, and Learning.
CSC Intro. to Computing Lecture 22: Artificial Intelligence.
I Robot.
1 Introduction to Artificial Intelligence (Lecture 1)
1 CMSC 671 Fall 2001 Class #11 – Tuesday, October 9.
Section 2.3 I, Robot Mind as Software McGraw-Hill © 2013 McGraw-Hill Companies. All Rights Reserved.
What is Artificial Intelligence?
What It Is To Be Conscious: Exploring the Plausibility of Consciousness in Deep Learning Computers Senior Project – Philosophy and Computer Science ID.
Neural Networks. Background - Neural Networks can be : Biological - Biological models Artificial - Artificial models - Desire to produce artificial systems.
Artificial Intelligence Hossaini Winter Outline book : Artificial intelligence a modern Approach by Stuart Russell, Peter Norvig. A Practical Guide.
Artificial Intelligence Skepticism by Josh Pippin.
Uses and Limitations Fall 2013 COMP3710 Artificial Intelligence Computing Science Thompson Rivers University.
Chapter 13 Artificial Intelligence. Artificial Intelligence – Figure 13.1 The Turing Test.
Artificial Intelligence. What is AI? „Study of intelligent behavior and the attempt to find ways in which such behavior could be engineered in any kind.
Outline Of Today’s Discussion
Chapter 7 Psychology: Memory.
Artificial Intelligence
Some Aspects of the History of Cognitive Science
The Nature of Science How can you differentiate between science and non-science using the scientific method?
AI and Agents CS 171/271 (Chapters 1 and 2)
Institute of Computing Technology
Presented by Tim Hamilton
Lecture One: Automata Theory Amjad Ali

Information Retrieval
Presentation transcript:

Artificial intelligence COS 116, Spring 2010 Adam Finkelstein

Artificial Intelligence Definition of AI (Merriam-Webster):  The capability of a machine to imitate intelligent human behavior  Branch of computer science dealing with the simulation of intelligent behavior in computers Learning:  To gain knowledge or understanding of or skill in by study, instruction, or experience  Machine learning (last lecture) - branch of AI

Intelligence in animal world Is an ant intelligent? Build huge, well-structured colonies organized using chemical-based messaging (“Super-organism”) What about dogs?

Deep mystery: How do higher animals (including humans) learn? How does become

A crude first explanation: Behaviorism [Pavlov 1890’s, Skinner 1930’s] Animals and humans can be understood in a “black box” way as a sum total of all direct conditioning events Bell  “Food is coming”  Salivate “This person likes me more if I call her “Mama” and that one likes me more if I call him “Papa”. Aside: What does behaviorism imply for societal organization?

More thoughts on behaviorism Original motivation: Cannot look inside the working brain anyway, so theory that assumes anything about its working is not scientific or testable. Today Little insight into how to design machines with intelligence. How did dogs, rats, humans sort through sensory experiences to understand reward/punishment?

Chomsky’s influential critique of Behaviorism [1957] “Internal mental structures crucial for learning.” Evidence: universal linguistic rules (“Chomsky grammars”); “self-correction” in language learning, ability to appreciate puns. 1.Brain is “prewired” for language. 2.Must understand mental structures to understand behavior

Presenting: Your brain

The brain Network of 100 billion neurons Evidence of timing mechanisms (“clock”) About 100 firings per second  Total of firings (“operations”) per second  Number of operations per sec in fast desktop PC:  Kurzweil predicts PC will match brain computationally by 2020

A comparison Your brain neurons Your life on a DVD 4.3 Gb for 3 hours > bytes for entire life Conclusion: Brain must contain structures that compress information and store it in an interconnected way for quick associations and retrieval

A simplistic model of neurons— Neural Net [McCulloch – Pitts 1943] Neuron computes “thresholds” Take the sum of strengths of all neighbors that are firing If sum > T, fire Inputs OutputsT: “threshold value” s i : “strength” assigned to input i s1s1 s2s2 sksk Does a neural network model remind you of something??

Why AI is feasible in principle: the simulation argument Write a simulation program that simulates all neurons in the brain and their firings. For good measure, also simulates underlying chemistry, blood flow, etc. In principle doable on today’s fastest computers Practical difficulty: How to figure out properties (threshold value, s i ) of each of neurons, the intricate chemistry

Maybe the brain is organized around simpler principles. Hope Simple machine learning algorithms from last lecture provide a hint?

Turing test (Turing 1950; see turinghub.com) You are allowed to chat with a machine or a human (don’t know which) You have to guess at the end if you were talking to a machine or human. (Machine wins if you have only success rate.) Note: Impossible for machine to store answers to all possible 5-minute conversations!

What are strengths and weaknesses of the Turing test? (Feel free to contrast with other tests, e.g. Stanford-Binet IQ, SAT) Strengths Weaknesses Too subjective Too human-centric Too behaviorist. Tests only one kind of intelligence. Not reducible to formula No obvious way to cheat Customizable to different topics Behavioral/ black box.

Text Captchas Beaten by Mori & Mailk [2002]Beaten by hackers? [NYT 2008] EZ-Gimpy [2001]Google [present]

Image Captchas KittenAuth [2006]Asirra [2007]

Strong AI (Searle) A machine able to: Other potentially relevant traits (unclear if necessary or even definable): consciousness, wisdom, self-awareness,…