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CS2351 Artificial Intelligence May June 2014 Important Questions

Anna University , Chennai

Department of Computer Science Engineering

Sixth Semester

CS2351 Artificial Intelligence
May June 2014 Important Questions 

(Regulation 2008) 

Attachment :

.pdf   CS2351 AI IMP 2014.pdf (Size: 350.99 KB / Downloads: 1,187)

1.  Explain in detail about the classification of task environments.
2.  Explain about various agent programs in detail.
3. Explain in detail about informed / heuristic searching strategies.
4. Explain in detail about Constraint Satisfaction Problems.
5. Explain how backtracking search is carried out in CSPs. Explain with examples.

1.  What are the steps involved in knowledge engineering process. Explain with an example. 
2.  What are unification and lifting in first order logic? 
3.  Explain briefly about forward chaining with an example.
4.  Explain briefly about backward chaining with an example.
5.  Explain in detail about resolution in first order logic. 

1. Explain in detail about Planning with State-Space Search. 
2. Explain partial order planning with example. 
3. Explain GRAPHPLAN algorithm in detail. 
4. Explain the concept of Hierarchical Task Network Planning in detail. 
5. Explain in detail about Multi-agent planning.

1. Explain various axioms of probability. 
2. Explain in detail about Bayes' Rule and Its Use. 
3. Explain the Semantics of Bayesian Networks. 
4. Explain how inference can be achieved in Bayesian Networks. 
5. Explain in detail about Hidden Markov Models 

1.  Explain in detail about Learning Decision Trees. 
2.  Explain in detail about how logical formulation of learning is carried out? 
3.  Write notes on Inductive Logic Programming with an example.
4.  Explain in detail about learning with hidden variables? (or) Explain about EM 
5. Write notes on Passive and Active reinforcement learning. 

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@srini ., pls change that 2nd unit , fourth question as backward chaining ..

“Work hard in silence, let your success be your noise...”


@Dhilipkumar Thanks bro,. Its Changed now,.

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