scispace - formally typeset
Open Access

Artificial Intelligence: A Modern Approach

Reads0
Chats0
TLDR
The field of Artificial Intelligence (AI) as discussed by the authors is one of the most popular areas of research in computer science and has been widely recognized as a promising area of research for many years.
Abstract
Humankind has given itself the scientific name homo sapiens--man the wise--because our mental capacities are so important to our everyday lives and our sense of self. The field of artificial intelligence, or AI, attempts to understand intelligent entities. Thus, one reason to study it is to learn more about ourselves. But unlike philosophy and psychology, which are also concerned with AI strives to build intelligent entities as well as understand them. Another reason to study AI is that these constructed intelligent entities are interesting and useful in their own right. AI has produced many significant and impressive products even at this early stage in its development. Although no one can predict the future in detail, it is clear that computers with human-level intelligence (or better) would have a huge impact on our everyday lives and on the future course of civilization. AI addresses one of the ultimate puzzles. How is it possible for a slow, tiny brain{brain}, whether biological or electronic, to perceive, understand, predict, and manipulate a world far larger and more complicated than itself? How do we go about making something with those properties? These are hard questions, but unlike the search for faster-than-light travel or an antigravity device, the researcher in AI has solid evidence that the quest is possible. All the researcher has to do is look in the mirror to see an example of an intelligent system. AI is one of the newest disciplines. It was formally initiated in 1956, when the name was coined, although at that point work had been under way for about five years. Along with modern genetics, it is regularly cited as the ``field I would most like to be in'' by scientists in other disciplines. A student in physics might reasonably feel that all the good ideas have already been taken by Galileo, Newton, Einstein, and the rest, and that it takes many years of study before one can contribute new ideas. AI, on the other hand, still has openings for a full-time Einstein. The study of intelligence is also one of the oldest disciplines. For over 2000 years, philosophers have tried to understand how seeing, learning, remembering, and reasoning could, or should, be done. The advent of usable computers in the early 1950s turned the learned but armchair speculation concerning these mental faculties into a real experimental and theoretical discipline. Many felt that the new ``Electronic Super-Brains'' had unlimited potential for intelligence. ``Faster Than Einstein'' was a typical headline. But as well as providing a vehicle for creating artificially intelligent entities, the computer provides a tool for testing theories of intelligence, and many theories failed to withstand the test--a case of ``out of the armchair, into the fire.'' AI has turned out to be more difficult than many at first imagined, and modern ideas are much richer, more subtle, and more interesting as a result. AI currently encompasses a huge variety of subfields, from general-purpose areas such as perception and logical reasoning, to specific tasks such as playing chess, proving mathematical theorems, writing poetry{poetry}, and diagnosing diseases. Often, scientists in other fields move gradually into artificial intelligence, where they find the tools and vocabulary to systematize and automate the intellectual tasks on which they have been working all their lives. Similarly, workers in AI can choose to apply their methods to any area of human intellectual endeavor. In this sense, it is truly a universal field.

read more

Citations
More filters
Proceedings ArticleDOI

Towards a standard upper ontology

Ian Niles, +1 more
TL;DR: The strategy used to create the current version of the SUMO is outlined, some of the challenges that were faced in constructing the ontology are discussed, and its most general concepts and the relations between them are described.
Journal ArticleDOI

Decision tree classification of land cover from remotely sensed data

TL;DR: This work presents several types of decision tree classification algorithms and shows that decision trees have several advantages for remote sensing applications by virtue of their relatively simple, explicit, and intuitive classification structure.
Journal ArticleDOI

Self-adaptive software: Landscape and research challenges

TL;DR: A taxonomy of research in self-adaptive software is presented, based on concerns of adaptation, that is, how, what, when and where, towards providing a unified view of this emerging area.
Journal ArticleDOI

Agent-based software engineering

TL;DR: The paper considers the problem of building a multi-agent system as a software engineering enterprise and discusses three issues: how agents might be specified; how these specifications might be refined or otherwise transformed into efficient implementations: and how implemented agents and multi- agent systems might subsequently be verified, to show that they are correct with respect to their specifications.
Journal ArticleDOI

Learning metric-topological maps for indoor mobile robot navigation

TL;DR: This paper describes an approach that integrates both paradigms: grid-based and topological, which gains advantages from both worlds: accuracy/consistency and efficiency.