Steam-powered Turing Machine University of Washington Department of Computer Science & Engineering
 CSE573 Course Overview
  CSE Home   About Us    Search    Contact Info 

Administrivia
 Home
 Using course email
 Email archive
 Policies
Content
 Topic Overview
 Slides & Reading
Assignments
 Problem sets
 Project
    We will cover a subset of the following topics:
  • Intro: overview, agents, problem spaces
  • Search: algorithms, heuristic generation, CSPs
  • Knowledge representation: propositional and first-order logic, theorem proving, subsumption, expressiveness-tractability tradeoff.
  • Planning: time, actiona languages, regression search, SAT compile, graphplan, planning as a CSP
  • Learning: dececision trees, information gain, overfitting, bias, ensembles, semi supervised learning
  • Uncertainty: Bayes nets, Markov networks, statistical-relational learning, learning, HMMs, DBNs, naive-bayes, EM
  • Natural language: information extraction, sliding window, CRFs, discriminative PCFGs
  • Planning under uncertainty: MDPS, RTDP, reinforcement learning


CSE logo Department of Computer Science & Engineering
University of Washington
Box 352350
Seattle, WA  98195-2350
(206) 543-1695 voice, (206) 543-2969 FAX