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Lecture Notes Artificial Intelligence: Definition Dae-Won Kim School of Computer Science & Engineering Chung-Ang University What are AI Systems? Deep Blue defeated the world chess champion Garry Kasparov in 1997 During the 1991 Gulf War, US forces deployed an AI logistics planning and scheduling program that involved up to 50,000 vehicles, cargo, and people Proverb solves crossword puzzles better than most humans Sony’s AIBO and Honda’s ASIMO Web Agents & Search engines: Google, Yahoo Recognition Systems: Speech, Character, Face, Iris, Fingerprint Virtual Reality and Computer Vision Potted History of AI 1943 1950 1950s 1956 1965 1966 1969 1980 1988 1985 1988 1995 2000 2003 McCulloch & Pitts: Boolean circuit model of brain Turing’s “Computing Machinery and Intelligence” Early AI programs Dartmouth meeting: “Artificial Intelligence” adopted Robinson’s complete algorithm for logical reasoning AI discovers computational complexity Neural network research almost disappears Early development of knowledge-based systems Expert systems industry booms Expert systems industry busts: “AI Winter” Neural networks return to popularity Resurgence of probability, soft computing. Agents, agents, everywhere … with Data Mining Bioinformatics powered by Human Genome Project Human-level AI back on the agenda: challengeable Some researchers consider AI as one of the four concepts: 1. Systems that think like humans 2. Systems that think rationally 3. Systems that act like humans 4. Systems that act rationally AI: Acting humanly Turing (1950): “The Turing Test” Can machines think? Can machines behave intelligently? Turing test is The ‘Imitation’ Game Predicted that by 2000, a machine might have 30% chance of fooling a lay person for 5 min. In 2014, something has happened. http://www.bbc.com/news/technology-27762088 Problem: Turing test is NOT … Turing test is NOT reproducible and amendable to mathematical analysis AI: Thinking humanly It requires scientific theories of internal activities of the brain What level of abstraction? “Knowledge” or “circuits”. How to validate? Requires something Requires: Cognitive Science Predicting and testing behavior of human subjects (top-down) Requires: Cognitive Neuroscience Direct identification from neurological data (bottom up) Problem: Thinking humanly is NOT Both are distinct from AI in CS The available theories do not explain anything resembling human-level general intelligence. AI: Thinking rationally Laws of Thought: “What are correct arguments/thought processes?” by Aristotle Several Greek schools developed various forms of logic: Logic: notation and rules of derivation of thoughts Problem: Thinking rationally is NOT Not all intelligent behavior is mediated by logical deliberation AI: Acting rationally Rational behavior: doing the RIGHT thing The RIGHT thing: that which is expected to maximize goal achievement, given the available information An agent is an entity that perceives and acts. Agents include humans, robots, programs, systems, etc. This course is about designing rational agents/SWs/programs/platforms. Abstractly, an agent is a function from percept histories to actions f:PA The agent program runs on the physical architecture to produce f For any given class of tasks and environments, we seek the agent with the best performance. Problem: Acting rationally is NOT Computational limitations make perfect rationality unachievable e.g.) NP-hard problems Design best program for given machine resources Which of the following can be done at present? • • • • • • • • • • • Play a decent game of table tennis Drive safely along a curving mountain road Drive safely along Telegraph Avenue Buy a week’s worth of groceries on the web Discover and prove a new mathematical theorem Design and execute a research program in biology Write an intentionally funny story Give legal advice in a specialized area of law Translate spoken English into Swedish in real time Perform a complex surgical operation Converse successfully with another person for an hour Artificial Intelligence Intelligent Agents Dae-Won Kim School of Computer Science & Engineering Chung-Ang University The agent function maps from percept histories to actions: f:PA A Vacuum-cleaner Agent • Perception: ? • Actions: ? • Perception: location and contents [A, Dirty]. • Actions: Left, Right, Suck, NoOp Problem: A Vacuum-cleaner Agent What is the right function? Let’s talk about Rationality A rational agent chooses whichever action maximizes the expected value of the performance measure given the percept sequence to date What is performance measure? 1 point per square cleaned up in time T? Minus 1 point per move? Penalize for > k dirty squares? Therefore, we can say Rational omniscient Perception may not supply all information Rational clairvoyant Action outcomes may not be as expected Hence, rational perfect To design a rational agent, we must specify the task environment (PEAS) • Performance measure • Environment • Actuators • Sensors Consider the task of designing the Google driverless car • P: safety, comfort, profits, legality • E: streets, freeways, traffic, weather • A: streering, accelerator, break • S: velocity, GPS, engine sensors Consider the task of designing an automated internet shopping agent: e.g., Recommender system • P: price, quality, efficiency • E: WWW sites, vendors • A: display to user, follow URL • S: HTML, XML pages Agent Types: four basic types in order of increasing generality • Simple reflex agents • Reflex agents with state • Goal-based agents • Utility-based agents Simple Reflex Agents 1. If a student sleeping, then assign a penalty. 2. When applied to Vehicle driving? Reflex Agents with State 1. Check the student’s academic history, habits.. 2. Vehicle driving ? Goal-based Agents 1. Consider goals: be a good professor in AI class 2. Vehicle driving ? Utility-based Agents 1. Utility: performance measure 2. How good grade I will assign / Prof. I could be. Learning Agents All agents will be turning into learning agents.