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Storing and Indexing Plan Derivations through Explanation-based Analysis of Retrieval Failures

Journal of Artificial Intelligence Research

Case-Based Planning (CBP) provides a way of scaling up domain-independent planning to solve large problems in complex domains. It replaces the detailed and lengthy search for a solution with the retrieval and adaptation of previous planning experiences. In general, CBP has been demonstrated to improve performance over generative (from-scratch) planning. However, the performance improvements it provides are dependent on adequate judgements as to problem similarity. In particular, although CBP may substantially reduce planning effort overall, it is subject to a mis-retrieval problem. The success of CBP depends on these retrieval errors being relatively rare. This paper describes the design and implementation of a replay framework for the case-based planner DERSNLP+EBL. DERSNLP+EBL extends current CBP methodology by incorporating explanation-based learning techniques that allow it to explain and learn from the retrieval failures it encounters. These techniques are used to refine judgements about case similarity in response to feedback when a wrong decision has been made. The same failure analysis is used in building the case library, through the addition of repairing cases. Large problems are split and stored as single goal subproblems. Multi-goal problems are stored only when these smaller cases fail to be merged into a full solution. An empirical evaluation of this approach demonstrates the advantage of learning from experienced retrieval failure.


Intelligent Adaptive Agents: A Highlight of the Field and the AAAI-96 Workshop

AI Magazine

There is a great dispute among researchers about the roles, characteristics, and specifications of what are called agents, intelligent agents, and adaptive agents. Most research in the field focuses on methodologies for solving specific problems (for example, communications, cooperation, architectures), and little work has been accomplished to highlight and distinguish the field of intelligent agents. As a result, more and more research is cataloged as research on intelligent agents. The Workshop on Intelligent Adaptive Agents, presented as part of the Thirteenth National Conference on Artificial Intelligence, addressed these issues as well as many others that are presented in this article.


AAAI 1997 Spring Symposium Reports

AI Magazine

The Association for the Advancement of Artificial Intelligence (AAAI) held its 1997 Spring Symposium Series on 24 to 26 March at Stanford University in Stanford, California. This article contains summaries of the seven symposia that were conducted: (1) Artificial Intelligence in Knowledge Management; (2) Computational Models for Mixed-Initiative Interaction; (3) Cross-Language Text and Speech Retrieval; (4) Intelligent Integration and Use of Text, Image, Video, and Audio Corpora; (5) Natural Language Processing for the World Wide Web; (6) Ontological Engineering; and (7) Qualitative Preferences in Deliberation and Practical Reasoning.


The State of the Art in Ontology Design: A Survey and Comparative Review

AI Magazine

We have selected 10 specific projects for this study, including general ontologies, domain-specific ones, and one knowledge representation system. The comparison framework includes general characteristics, such as the purpose of an ontology, its coverage (general or domain specific), its size, and the formalism used. Characteristics that describe the content of an ontology include taxonomic organization, types of concept covered, top-level divisions, internal structure of concepts, representation of part-whole relations, and the presence and nature of additional axioms. By identifying the similarities and differences among existing ontologies, we clarify the range of alternatives in creating a standard framework for ontology design.


Does Machine Learning Really Work?

AI Magazine

Does machine learning really work? Over the past decade, machine learning has evolved from a field of laboratory demonstrations to a field of significant commercial value. Machine-learning algorithms have now learned to detect credit card fraud by mining data on past transactions, learned to steer vehicles driving autonomously on public highways at 70 miles an hour, and learned the reading interests of many individuals to assemble personally customized electronic newsAbstracts. This article, based on the keynote talk presented at the Thirteenth National Conference on Artificial Intelligence, samples a number of recent accomplishments in machine learning and looks at where the field might be headed.


AAAI-96 Workshop on Agent Modeling

AI Magazine

The Workshop on Agent Modeling, held as part of the Thirteenth National Conference on Artificial Intelligence, was organized to bring together researchers working in these areas to assess the state of the art and discuss the common issues in representation and reasoning with models of agents.


The Sixth International Workshop on Nonmonotonic Reasoning

AI Magazine

The Sixth International Workshop on Nonmonotonic Reasoning was held 10 to 12 June 1996 in Timberline, Oregon. The aim of the workshop was to bring together active researchers interested in nonmonotonic reasoning to discuss current research, results, and problems of both a theoretical and a practical nature.


Artificial Intelligence: Realizing the Ultimate Promises of Computing

AI Magazine

Artificial intelligence (AI) is the key technology in many of today's novel applications, ranging from banking systems that detect attempted credit card fraud, to telephone systems that understand speech, to software systems that notice when you're having problems and offer appropriate advice. These technologies would not exist today without the sustained federal support of fundamental AI research over the past three decades.


Applied AI News

AI Magazine

The system generates traffic flow measurements that enable traffic operations centers to monitor traffic movement and better respond to accidents Wal-Mart Stores (Bentonville, Ark.) Tektronix (Wilsonville, Ore.), a and congestion. This system, which manage its automated storage and models for its computer-assisted includes fuzzy logic and neural network retrieval system. The systems will Mexico), a producer of metals, has Calif.) is using visualization and digital monitor satellite signals in near real implemented an intelligent system to prototyping software for vehicle time, alerting operators to out-of-tolerance improve its zinc yield. The advanced design and manufacturing within its conditions and the presence of control expert system provides operator new concurrent engineering system. The application was developed and virtual manufacturing.


On the Other Hand ... Cognitive Prostheses

AI Magazine

With a power screwdriver the computer, the web, robots, the Europe the Hindu-Arabic system of anyone can drive the hardest screw; automation of manufacturing will all numbers and the arithmetic algorithms with a calculator, anyone can get the conspire to separate the rich and they made possible. One of the numbers right; with an aircraft anyone quick from the poor and slow, hurrying first books after the Bible printed with can fly to Paris; and with Deep the trend to an informed, skilled, moveable type was an Arithmetic. Blue, anyone can beat the world chess and employed elite living among an Even so, the algorithms were not easy champion. Cognitive prostheses undermine uninformed, unskilled, and unemployed and not widely disseminated. But both history and 17th century tradesman could not by giving non-experts equivalent an understanding of human-machine multiply.