Are you looking for CS1351/Artificial Intelligence old question paper of Anna University, Chennai. Hereunder provided is such paper conducted in the year 2008 for B.E Computer Science and Engineering course. Read on to collect the contents of the question paper.
Anna University, Chennai-25,
B.E/B.Tech Degree Examination
Computer Science Engineering
CS1351 - Artificial Intelligence
Time: 3 hours
Maximum: 100 marks
PART -A ( 2 x 10 = 20)
1) What is the use of heuristic functions?
2) Define artificial intelligence.
3) How to improve the effectiveness of a search based problem solving technique?
4) What is a constraint satisfactions problem?
5) What is a unification algorithm?
6) How can you represent the resolution in predicate logic?
7) List out the advantages of nonmonotonic reasoning.
8) Differentiate between JTMS and LTMS
9) List out the important components of a script.
10) What are framesets and instances?
PART - B (16 x 5 = 80)
11. (a) (i) Give an example of a problem for which breath first search would work better than depth first search.
(ii). Explain the algorithm for steepest hill climbing.
OR
(b) Explain the following search strategies.
(i) Best first search
(ii) A* search.
12. (a) Explain Min Max search procedure
OR
(b). Describe alpha-beta pruning and give the other modifications to the minmax procedure to improve its performance.
13. (a) Illustrate the use of predicate logic to represent the knowledge with suitable example.
OR
(b) Consider the following sentences:
John likes all kinds of food.
Apples are food.
Chicken is food
Anything anyone eats and isn't killed alive.
sue eats everything bill eats
(i) Translate these sentences into formulas in predicate logic.
(ii) Prove that john likes peanuts using backward chaining
(iii) Covert the formulas of a part into clause form
(iv) Prove the tjohn likes peanuts using resolution.
14 (a) With an example explain the logics for nonmonotonic reasoning
OR
(b) Explain how Beyesian statistics provides reasoning under various kinds of uncertainty
15. (a) (i) Construct semantic net representations for the following:
pomepeian (Marcus), Blacksmith ( marcus)
Mary gave the green flowered vase to her favorite cousin.
(ii) Construct partitioned semantic net represtations for the following:
Every batter hit a ball
All the batters like the pitcher.
OR
(b) (i) Illustrate the learning from examples by induction with suitable examples.
Anna University, Chennai-25,
B.E/B.Tech Degree Examination
Computer Science Engineering
CS1351 - Artificial Intelligence
Time: 3 hours
Maximum: 100 marks
PART -A ( 2 x 10 = 20)
1) What is the use of heuristic functions?
2) Define artificial intelligence.
3) How to improve the effectiveness of a search based problem solving technique?
4) What is a constraint satisfactions problem?
5) What is a unification algorithm?
6) How can you represent the resolution in predicate logic?
7) List out the advantages of nonmonotonic reasoning.
8) Differentiate between JTMS and LTMS
9) List out the important components of a script.
10) What are framesets and instances?
PART - B (16 x 5 = 80)
11. (a) (i) Give an example of a problem for which breath first search would work better than depth first search.
(ii). Explain the algorithm for steepest hill climbing.
OR
(b) Explain the following search strategies.
(i) Best first search
(ii) A* search.
12. (a) Explain Min Max search procedure
OR
(b). Describe alpha-beta pruning and give the other modifications to the minmax procedure to improve its performance.
13. (a) Illustrate the use of predicate logic to represent the knowledge with suitable example.
OR
(b) Consider the following sentences:
John likes all kinds of food.
Apples are food.
Chicken is food
Anything anyone eats and isn't killed alive.
sue eats everything bill eats
(i) Translate these sentences into formulas in predicate logic.
(ii) Prove that john likes peanuts using backward chaining
(iii) Covert the formulas of a part into clause form
(iv) Prove the tjohn likes peanuts using resolution.
14 (a) With an example explain the logics for nonmonotonic reasoning
OR
(b) Explain how Beyesian statistics provides reasoning under various kinds of uncertainty
15. (a) (i) Construct semantic net representations for the following:
pomepeian (Marcus), Blacksmith ( marcus)
Mary gave the green flowered vase to her favorite cousin.
(ii) Construct partitioned semantic net represtations for the following:
Every batter hit a ball
All the batters like the pitcher.
OR
(b) (i) Illustrate the learning from examples by induction with suitable examples.
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