From dfe@aifbbach.aifb.uni-karlsruhe.de Fri Feb 11 11:58:40 EST 1994 Article: 20639 of comp.ai Xref: glinda.oz.cs.cmu.edu comp.ai:20639 Path: honeydew.srv.cs.cmu.edu!fs7.ece.cmu.edu!europa.eng.gtefsd.com!news.msfc.nasa.gov!sol.ctr.columbia.edu!xlink.net!rz.uni-karlsruhe.de!aifbbach!dfe From: dfe@aifbbach.aifb.uni-karlsruhe.de (Dieter Fensel) Newsgroups: comp.ai Subject: Familiarization Workshop Knowledge Level Models of Machine Learning Date: 11 Feb 1994 12:45:29 GMT Organization: AIFB, Universitaet Karlsruhe, Germany Lines: 203 Sender: dfe@aifbbach (Dieter Fensel) Distribution: world Message-ID: <2jful9$ql8@nz12.rz.uni-karlsruhe.de> NNTP-Posting-Host: aifbbach.aifb.uni-karlsruhe.de Mime-Version: 1.0 Content-Type: text/plain; charset=iso-8859-1 Content-Transfer-Encoding: 8bit %% -*-LaTeX-*- file created by Walter Van de Velde %% Artificial Intelligence Laboratory %% Vrije Universiteit Brussel %% Pleinlaan 2, B-1050 Brussels, Belgium %% Email: walter@arti.vub.ac.be %% Wed Jan 5 14:47:37 1994 \documentstyle{article} \title{Familiarization Workshop\\knowledge level models of machine learning} \author{Walter Van de Velde} \date{January 22nd, 1994} \begin{document} \maketitle \begin{abstract} This is an invitation to participate in, and submit to a workshop to be organized in the context of the second MLNet familiarization workshop, 6-8 april 1994, Catania, Italy. It provides the following information: title, topic description, relevance, potential, workshop format, organizing committee and time table. \end{abstract} \section{Title} Knowledge Level Models of Machine Learning \section{Topic Description} The aim of this workshop is to discuss knowledge level modeling applied to machine learning systems and algorithms. An important distinction in current expert systems research is the one between knowledge level and symbol level \cite{Newell:82a}. Systems can be described at either of these levels. Briefly stated, a knowledge level description emphasizes the knowledge contents of a system (e.g. goals, actions and knowledge used in a rational way) whereas the symbol level describes its computational realization (in terms of representations and inference mechanisms). There is a consensus that modeling at the knowledge level is a useful intermediate step in the development of an expert system \cite{SteelsMcDermott:93}. So called second generation expert systems explicitly incorporate aspects of their knowledge level structure, resulting in potential advantages for knowledge acquisition, design, implementation, explanation and maintenance (see \cite{David:93a} for an overview on the state of the art). The technical goal is to construct generic components which can be reused and refined as needed, guided by features of the domain and the task instead of by engineering considerations. This workshop investigates the results on describing learning systems at the knowledge level, hoping to gain some of the same advantages. Although the earliest attempts to do this \cite{Dietterich:86} failed to lead to useful results, later efforts provided interesting insights \cite{Flann:89a}. Maybe a more important reason for the exploration of the knowledge level of learning systems is that the notion of knowledge level itself, as it is currently used in expert systems research, is no longer equivalent to Newell's \cite{VandeVelde:93a}. Currently used models are considerably more manageable, structured and, in a sense, more engineering oriented. Knowledge level analysis of learning systems can directly benefit from the developments in knowledge modeling that are currently taking place (see e.g. \cite{Klinker:93a} for recent work). Moreover the knowledge level analysis of machine learning systems can be done directly in available environments allowing for the easy integration with problem solving or knowledge acquisition systems. Note that the relevance of the knowledge level ideas to machine learning is broader than what is described here (e.g., learning of knowledge level models). To keep the present workshop relatively focussed It is suggested to stick closely to the main topic: knowledge level modeling of machine learning. \section{Relevance} The topic of this workshop is relevant for several reasons: \begin{itemize} \item It provides insights into essential features, differences and similarities of machine learning algorithms \item It contributes to the flexible and problem specific configuration of learning systems \item It contributes to integrating learning into performing systems \item It contributes to the bridge between ML and KA \item It supports the exchange and reuse of results in machine learning.\footnote{From the answers to the questionnaire organized by the VUB AI-Lab at IJCAI and the previous MLNet workshop, the problems in exchange and reuse of systems emerged as one of the key bottlenecks in current research practice.} \end{itemize} We are looking forward to a strong interest and participation in this workshop: \begin{itemize} \item Europe has a strong tradition in knowledge level modeling, with the developments of such methodologies as KADS and Components of Expertise, and of languages and environments for constructing knowledge level models (KARL, MoMo, KresT, FML, and so on) and large scale projects in this direction such as MLT and parts of KADS-II. \item Several papers have been seen on knowledge level modeling of learning (e.g. at the previous familiarization workshop in the section on integrated architectures, in the last KADS user group meeting, in the European Workshop on Case-Based Reasoning, and so forth). The workshop is a good opportunity to bring these results together. \item The workshop works on the bridge between knowledge acquisition and machine learning, using concepts of the KA community to understand results in the ML community. \end{itemize} \section{Workshop Format} The workshop will consist of presentations of papers and work in small subgroups to develop knowledge models of learning in specific frameworks. Participants are encouraged to bring software that can be used for the interactive construction, configuration and execution of knowledge level models of machine learning algorithms. These environments exist (at least KresT, the CommonKADS workbench and NOOS can be provided) and a result of the workshop will be their application in a real experiment of exchange, reuse and configuration of machine learning systems and algorithms. In addition the workshop will issue a call for knowledge level models of machine learning systems and algorithms to be input in a common library. Assistance will be provided so that all the participants in ECML or the workshops have a chance to contribute to this effort. This aspect is depending on the availability of some computing infrastructure at the site of the conference, an issue which will be treated in due course. \section{Organizing Committee} Agnar Aamodt (University of Trondheim, Norway)\\ Dieter Fensel (University of Karlsruhe, Germany)\\ Enric Plaza (IIIA, Blanes, Catalunya, Spain)\\ Walter Van de Velde (VUB AI-Lab, Brussels, Belgium)\\ Maarten Van Someren (SWI, Universtiy of Amsterdam, The Netherlands) \section{Timetable} \begin{description} \item[March 1:] submission deadline \item[March 15:] notification of acceptance (allows for early registration fee) \item[March 30:] copy for distribution due. Only participants that are actually registered will be included in the proceedings. \item[April 9-10:] workshop \end{description} Please send your submission before March 1 to the address below. LaTeX submissions by email are strongly encouraged. \begin{verbatim} Walter Van de Velde Artificial Intelligence Laboratory Tel: +32 2 641 37 00 Vrije Universiteit Brussel Fax: +32 2 641 37 29 Pleinlaan 2, B-1050 Brussels Email: walter@arti.vub.ac.be \end{verbatim} \begin{thebibliography}{} \bibitem[David et~al., 1993]{David:93a} David, J.-M., Krivine, J.-P., and Simmons, R. (Eds.). (1993). \newblock {\em Second Generation Expert Systems}. \newblock Springer Verlag, Berlin. \bibitem[Dietterich, 1986]{Dietterich:86} Dietterich, T.~G. (1986). \newblock Learning at the knowledge level. \newblock {\em Machine Learning}, 1, 287--316. \bibitem[Flann and Dietterich, 1989]{Flann:89a} Flann, N. and Dietterich, T. (1989). \newblock A study of explanation-based methods for inductive learning. \newblock {\em Machine Learning}, 4(2), 187--226. \bibitem[Klinker, 1993]{Klinker:93a} Klinker, G. (Ed.). (1993). \newblock {\em Special Issue: Current issues in knowledge modeling}, volume~5 of {\em Knowledge Acquisition}. \newblock Academic Press. \bibitem[Newell, 1982]{Newell:82a} Newell, A. (1982). \newblock The knowledge level. \newblock {\em Artificial Intelligence}, 18, 87--127. \bibitem[Steels and McDermott, 1993]{SteelsMcDermott:93} Steels, L. and McDermott, J. (Eds.). (1993). \newblock {\em The Knowledge Level in Expert Systems. Conversations and Commentary}. \newblock Academic Press, Boston, MA. \bibitem[{Van de Velde}, 1993]{VandeVelde:93a} {Van de Velde}, W. (1993). \newblock Issues in knowledge level modeling. \newblock In J.-M.~David, J.-P.~K. and Simmons, R. (Eds.). , {\em Second Generation Expert Systems}. Springer Verlag, Berlin. \end{thebibliography} \end{document}