Experimental Comparison of Uninformed and Heuristic AI Algorithms for N Puzzle Solution
Proceeding: The Second International Conference on Informatics Engineering & Information Science (ICIEIS)Publication Date: 2013-11-12
Authors : Kuruvilla Mathew; Mujahid Tabassum; Mohana Ramakrishnan;
Page : 43-50
Keywords : Artificial Intelligence; N Puzzle Solution; Uninformed and Heuristic AI Techniques;
Abstract
This paper compares the performance of popular AI techniques, namely the Breadth First Search, Depth First Search, A* Search, Greedy Best First Search and the Hill Climbing Search in approaching the solution of a N-Puzzle of size 8, on a 3x3 matrix board. It looks at the complexity of each algorithm as it tries to approaches the solution in order to evaluate the operation of each technique and identify the better functioning one in various cases. The N Puzzle is used as the test scenario and an application was created to implement each of the algorithms to extract results. The paper also depicts the extent each algorithm goes through while processing the solution and hence helps to clarify the specific cases in which a technique may be preferred over another.
Other Latest Articles
- HP Model Protein Folding with Hybrid Algorithm using Genetic Algorithm and Estimation of Distribution Algorithm
- Integrated High-Performance and Web-Oriented System of The Kazakh Language Text Recognition
- Experiment Design for Prediction of Human Personality through Analysis of Activities Stored in Electronic Organizer
- Packet Internet Billing Framework to Enhance Service Level Agreement (SLA) In Convergence Network
- HS-SLA: A Hierarchical Self-Healing SLA Model for Cloud Computing
Last modified: 2013-11-14 22:52:17