Rules of Inference in Artificial Intelligence
| Institution | Jomo Kenyatta University of Science and Technology |
| Course | Information Technol... |
| Year | 3rd Year |
| Semester | Unknown |
| Posted By | Jeff Odhiambo |
| File Type | |
| Pages | 7 Pages |
| File Size | 235.51 KB |
| Views | 1640 |
| Downloads | 0 |
| Price: |
Buy Now
|
Description
Rules of Inference in Artificial Intelligence (AI) are logical principles that enable the derivation of new truths from existing knowledge, ensuring sound reasoning in automated systems. They help AI systems in theorem proving, automated reasoning, and decision-making by systematically deriving conclusions from a given set of premises. Effective use of these inference rules enhances the ability of AI to reason, solve problems, and make logical decisions in knowledge-based systems.
Below is the document preview.
Search Algorithms in Artificial Intelligence
Buy "Search Algorithms in Artificial Intelligence" now and learn how to harness the power of AI to solve complex problems efficiently. This comprehensive book delves into various search algorithms, from uninformed (blind) search to informed (heuristic) search strategies. With clear explanations and detailed examples, you'll explore techniques such as breadth-first search, depth-first search, uniform-cost search, and the powerful A* search. Perfect for beginners and experienced professionals alike, this book provides valuable insights into the mechanisms that drive intelligent agents.
Discover the fascinating world of problem-solving agents, search spaces, and the intricacies of search trees. The book covers essential concepts like path cost, transition models, and optimal solutions, making it an indispensable resource for anyone looking to deepen their understanding of AI's core methodologies. "Search Algorithms in Artificial Intelligence" equips you with the knowledge to tackle real-world challenges using state-of-the-art search techniques, ensuring you stay ahead in the ever-evolving field of AI.
14 Pages
1347 Views
1 Downloads
229.63 KB
Informed Search Algorithms in AI
Buy "Informed Search Algorithms in AI" now and learn how advanced search techniques can efficiently navigate large and complex search spaces. This comprehensive book explores informed search algorithms, such as Best-First Search and A* Search, which utilize heuristic functions to guide the search process. Through clear explanations and practical examples, you'll gain insights into how these algorithms use knowledge like path cost and proximity to the goal to find solutions more effectively. This makes the book an invaluable resource for both beginners and seasoned professionals in the field of artificial intelligence.
Discover the power of heuristic functions in optimizing search strategies and minimizing exploration. The book covers essential concepts such as admissibility, heuristic cost, and evaluation functions, providing a solid foundation for understanding the mechanisms behind informed search algorithms. With detailed discussions on the advantages and limitations of these techniques, "Informed Search Algorithms in AI" equips you with the knowledge to apply these methods to solve real-world problems, ensuring you stay ahead in the ever-evolving field of AI.
7 Pages
1107 Views
0 Downloads
139.29 KB
Hill Climbing Algorithm in AI
Trending!
Buy "Hill Climbing Algorithm in AI" now and learn how this powerful optimization technique can solve complex problems with ease. This comprehensive book delves into the intricacies of the hill climbing algorithm, a local search method that continuously moves towards higher elevations to find the optimal solution. Through detailed examples and practical applications, you'll explore how hill climbing is used to tackle mathematical challenges like the Traveling Salesman Problem. Perfect for both beginners and seasoned professionals, this book provides valuable insights into the algorithm's workings, its components, and various types, including simple, steepest-ascent, and stochastic hill climbing.
Discover the fascinating features of hill climbing, such as its greedy approach, generate and test variant, and state-space landscape. The book covers essential concepts like local and global maxima, plateaus, and ridges, and provides solutions to common problems encountered during the search process. By understanding these key elements, you'll be equipped to apply hill climbing algorithms to real-world scenarios and optimize your problem-solving strategies. "Hill Climbing Algorithm in AI" is an essential read for anyone looking to deepen their knowledge of AI's optimization techniques and enhance their analytical skills.
6 Pages
2072 Views
0 Downloads
117.37 KB
Means-Ends Analysis in AI
Buy "Means-Ends Analysis in AI" now and learn how to solve complex and large problems with a mixture of forward and backward reasoning techniques. This comprehensive book introduces the concept of Means-Ends Analysis (MEA), a problem-solving strategy that limits search in AI programs by first solving major parts of a problem and then addressing smaller subproblems as they arise. With practical examples and detailed explanations, you'll explore how MEA works by evaluating differences between the current state and goal state, and applying operators to reduce these differences, making it accessible to both beginners and seasoned professionals.
Dive into the fascinating world of Operator Subgoaling, where operators are selected, and subgoals are set up to establish the preconditions for solving a problem. The book covers the essential algorithm for MEA and provides real-world examples to illustrate its application in various AI-driven tasks. "Means-Ends Analysis in AI" is an essential read for anyone looking to deepen their understanding of AI's problem-solving techniques and apply these methods to tackle real-world challenges effectively.
4 Pages
1920 Views
0 Downloads
111.9 KB
Subsets of Artificial Intelligence
Buy "Subsets of Artificial Intelligence" now and learn about the diverse and fascinating subsets that make up the field of AI. This comprehensive book explores key areas such as machine learning, deep learning, natural language processing, expert systems, robotics, machine vision, and speech recognition. With clear explanations and practical examples, you'll gain insights into how these subsets work together to create intelligent systems that can learn, understand, and interact with the world around them. Perfect for both beginners and seasoned professionals, this book provides valuable knowledge on the mechanisms driving AI.
Discover how machine learning algorithms allow systems to learn from historical data, how deep learning mimics the human brain's neural networks, and how natural language processing enables computers to understand human language. The book also covers the application of AI in robotics, expert systems, and machine vision, providing a thorough understanding of each subset's role and significance. "Subsets of Artificial Intelligence" is an essential read for anyone looking to deepen their knowledge of AI and its various components.
7 Pages
1904 Views
1 Downloads
225.12 KB
Types of Artificial Intelligence
Buy "Types of Artificial Intelligence" now and learn about the diverse and dynamic categorization of AI based on capabilities and functionalities. This comprehensive book delves into the distinctions between Narrow AI, General AI, and Super AI, highlighting how these types of AI perform tasks with varying degrees of intelligence and autonomy. With detailed examples and engaging narratives, you'll explore real-world applications of Narrow AI, such as Apple's Siri and IBM's Watson, and understand the potential and challenges of developing General AI and Super AI.
Discover the fascinating functionalities of AI, including Reactive Machines, Limited Memory, Theory of Mind, and Self-Awareness. The book explains how each type operates, from reactive machines like IBM's Deep Blue to the hypothetical concept of self-awareness AI. With insights into the current state and future possibilities of AI, "Types of Artificial Intelligence" is an essential read for anyone looking to deepen their understanding of AI's diverse landscape and its impact on our world.
3 Pages
1966 Views
0 Downloads
94.78 KB
Introduction to Medicine
A simple introduction to medicine
19 Pages
1661 Views
0 Downloads
357.32 KB
HBC 2201 :INTERMEDIATE ACCOUNTING 1
The conceptual framework of accounting, also called the theoretical framework of
accounting is a coherent system of interrelated objectives and fundamentals that
can lead to consistent standards and that prescribes the nature, function and limits
of financial accounting and financial accounting statements. It is the constitution of
accounting. This framework has been created, developed or decreed on the basis of
the needs of accountants and the users of financial information. It is usually backed
up by authority and professional pronouncements of the accounting profession. The
pervasive use of the framework rests upon its general recognition and acceptance
by the accountants and the users of financial statements.
97 Pages
1664 Views
1 Downloads
1.13 MB
BIT 2212 Business process modeling
Buy Business Process Modelling and learn more about analyzing, designing, and optimizing business processes to improve efficiency and effectiveness.
27 Pages
665 Views
1 Downloads
30.37 MB
BIT 2212 Business Process Modeling - Handwritten
Trending!
Buy Business Process Modelling and learn more about analyzing, designing, and optimizing business processes to improve efficiency and effectiveness.
27 Pages
2040 Views
2 Downloads
30.37 MB