Expert Support Systems for New Product Development Decision Making: A Modeling Framework and Applications

A modeling framework that merges knowledge-based expert systems and decision support systems with management science methods for project evaluation is presented. In particular, the strategic decision to commit to full-scale development of a new product is considered. At the core of the framework are the methods and techniques used for acquiring, modeling and processing the expert knowledge and data. Methods and techniques used include scoring models, logic tables, the analytic hierarchy process, discriminant analysis, and rule-based systems. The suggested modeling approach obtains the benefits of normative modeling as well as the flexibility and developmental advantages of expert systems. Additional benefits include reduced information processing and gathering time, which can help to accelerate the product development cycle. Potential spin-offs of this research include applications for project evaluation throughout the product development cycle and other areas such as capital budgeting. Finally, a series of related case studies that have successfully implemented this framework is described.

[1]  Thomas W. Malone,et al.  Expert systems: the next challenge for managers , 1986 .

[2]  Robert G. Cooper,et al.  A process model for industrial new product development , 1983, IEEE Transactions on Engineering Management.

[3]  J. Dyer Remarks on the analytic hierarchy process , 1990 .

[4]  R. L. Winkler Decision modeling and rational choice: AHP and utility theory , 1990 .

[5]  Albert Paolini,et al.  Project Selection Methods That Pick Winners , 1977 .

[6]  Matthew J. Liberatore A Decision Support Approach for R&D Project Selection , 1989 .

[7]  Burton V. Dean,et al.  Scoring and Profitability Models for Evaluating and Selecting Engineering Projects , 1965 .

[8]  W MaloneThomas,et al.  Expert systems: the next challenge for managers , 1986 .

[9]  T. Saaty An exposition of the AHP in reply to the paper “remarks on the analytic hierarchy process” , 1990 .

[10]  Hemant K. Jain,et al.  Evaluating Research Proposals with Group Techniques , 1981 .

[11]  Joseph P. Martino,et al.  The selection of R&D program content — Survey of quantitative methods , 1967 .

[12]  Sudha Ram,et al.  Innovator: an expert system for new product launch decisions , 1988, Appl. Artif. Intell..

[13]  Neil R. Baker R&D Project Selection Models: An Assessment , 1975 .

[14]  Luis G. Vargas,et al.  Reply to “remarks on the analytic hierarchy process” by J. S. Dyer , 1990 .

[15]  D. R. Augood,et al.  A review of R&D evaluation methods , 1973 .

[16]  Robert G. Cooper,et al.  Selecting Winning New Product Projects: Using the NewProd System , 1985 .

[17]  Michael Goul,et al.  Validating expert systems , 1990, IEEE Expert.

[18]  William E. Souder,et al.  Comparative Analysis of R&D Investment Models , 1972 .

[19]  Matthew J. Liberatore,et al.  The Practice of Management Science in R&D Project Management : Management Science , 1983 .

[20]  Efraim Turban,et al.  Integrating Expert Systems and Decision Support Systems , 1986, MIS Q..

[21]  James R. Freeland,et al.  Recent Advances in R&D Benefit Measurement and Project Selection Methods : Management Science , 1975 .

[22]  L. WinklerRobert,et al.  Decision Modeling and Rational Choice , 1990 .

[23]  Peter Fahrni,et al.  An application-oriented guide to R&D project selection and evaluation methods , 1990 .

[24]  T. Saaty,et al.  The Analytic Hierarchy Process , 1985 .

[25]  Sudha Ram,et al.  Expert systems: An emerging technology for selecting new product winners , 1989 .

[26]  W. H. Bleuel The Practice of Management Science , 1977 .

[27]  D. Wilemon,et al.  Accelerating the Development of Technology-Based New Products , 1990 .

[28]  J. Ross Quinlan,et al.  Learning Efficient Classification Procedures and Their Application to Chess End Games , 1983 .

[29]  Tin A. Nguyen,et al.  Knowledge base verification , 1987 .

[30]  Samuel Holtzman,et al.  Intelligent decision systems , 1988 .

[31]  David B. Paradice,et al.  A KNOWLEDGE‐BASED DSS FOR MANAGERIAL PROBLEM DIAGNOSIS , 1987 .

[32]  D. Bruce Merrifield Planning Tools for Effective Research Management in the '80s: Selecting Projects for Commercial Success , 1981 .

[33]  James S. Dyer,et al.  A clarification of “remarks on the analytic hierarchy process” , 1990 .

[34]  C. Landauer Correctness principles for rule-based expert systems☆ , 1990 .

[35]  Philip Klahr,et al.  Evaluation of expert systems: issues and case studies , 1983 .

[36]  John C. Henderson FINDING SYNERGY BETWEEN DECISION SUPPORT SYSTEMS AND EXPERT SYSTEMS RESEARCH , 1987 .

[37]  Jae Beom Lee,et al.  Intelligent decision support systems for business applications: with an example of portfolio management decision-making , 1986 .

[38]  Michael Goul,et al.  A verification approach for knowledge-based systems , 1989 .

[39]  Anthony C. Stylianou,et al.  Expert support systems: integrating AI technologies , 1993, CACM.

[40]  Km Watts,et al.  The use of advanced management techniques in R & D , 1987 .

[41]  Norman R. Baker,et al.  R and D project selection: Where we stand , 1964 .

[42]  Daniel E. O'Leary,et al.  VALIDATION OF EXPERT SYSTEMS- WITH APPLICATIONS TO AUDITING AND ACCOUNTING EXPERT SYSTEMS* , 1987 .

[43]  S. S. Sengupta,et al.  Research Budgeting and Project Selection , 1962, IRE Transactions on Engineering Management.

[44]  Kim B. Clark,et al.  Product development performance : strategy, organization, and management in the world auto industry / Kim B. Clark, Tahahiro Fujimoto , 1991 .

[45]  Matthew J. Liberatore,et al.  An extension of the analytic hierarchy process for industrial R&D project selection and resource allocation , 1987, IEEE Transactions on Engineering Management.

[46]  Osman Balci,et al.  Validating Expert System Performance , 1987, IEEE Expert.

[47]  Robert M. O'Keefe,et al.  Artificial Intelligence and the Management Science Practitioner: Expert Systems and MS/OR Methodology (Good News and Bad) , 1988 .

[48]  Andrew B. Whinston,et al.  FUTURE DIRECTIONS FOR DEVELOPING DECISION SUPPORT SYSTEMS , 1980 .