The Meaning of “Near” and “Far”: The Impact of Structuring Design Databases and the Effect of Distance of Analogy on Design Output

This work lends insight into the meaning and impact of “near” and “far” analogies. A cognitive engineering design study is presented that examines the effect of the distance of analogical design stimuli on design solution generation, and places those findings in context of results from the literature. The work ultimately sheds new light on the impact of analogies in the design process and the significance of their distance from a design problem. In this work, the design repository from which analogical stimuli are chosen is the U.S. patent database, a natural choice, as it is one of the largest and easily accessed catalogued databases of inventions. The “near” and “far” analogical stimuli for this study were chosen based on a structure of patents, created using a combination of latent semantic analysis and a Bayesian based algorithm for discovering structural form, resulting in clusters of patents connected by their relative similarity. The findings of this engineering design study are juxtaposed with the findings of a previous study by the authors in design by analogy, which appear to be contradictory when viewed independently. However, by mapping the analogical stimuli used in the earlier work into similar structures along with the patents used in the current study, a relationship between all of the stimuli and their relative distance from the design problem is discovered. The results confirm that “near” and “far” are relative terms, and depend on the characteristics of the potential stimuli. Further, although the literature has shown that “far” analogical stimuli are more likely to lead to the generation of innovative solutions with novel characteristics, there is such a thing as too far. That is, if the stimuli are too distant, they then can become harmful to the design process. Importantly, as well, the data mapping approach to identify analogies works, and is able to impact the effectiveness of the design process. This work has implications not only in the area of finding inspirational designs to use for design by analogy processes in practice, but also for synthesis, or perhaps even unification, of future studies in the field of design by analogy. [DOI: 10.1115/1.4023158]

[1]  L. Guttman A basis for scaling qualitative data. , 1944 .

[2]  R. A. Bradley,et al.  RANK ANALYSIS OF INCOMPLETE BLOCK DESIGNS , 1952 .

[3]  R. A. Bradley,et al.  RANK ANALYSIS OF INCOMPLETE BLOCK DESIGNS THE METHOD OF PAIRED COMPARISONS , 1952 .

[4]  R. A. Bradley,et al.  Rank Analysis of Incomplete Block Designs: I. The Method of Paired Comparisons , 1952 .

[5]  W. Gordon Synectics: The Development of Creative Capacity , 1961 .

[6]  D. H. Wheeler,et al.  The early growth of logic in the child : classification and seriation , 1965 .

[7]  M. Ross Quillian,et al.  Retrieval time from semantic memory , 1969 .

[8]  Peter H. A. Sneath,et al.  Numerical Taxonomy: The Principles and Practice of Numerical Classification , 1973 .

[9]  J. Carroll,et al.  Spatial, non-spatial and hybrid models for scaling , 1976 .

[10]  K. Holyoak,et al.  Analogical problem solving , 1980, Cognitive Psychology.

[11]  R N Shepard,et al.  Multidimensional Scaling, Tree-Fitting, and Clustering , 1980, Science.

[12]  Richard A. Harshman,et al.  Indexing by Latent Semantic Analysis , 1990, J. Am. Soc. Inf. Sci..

[13]  Craig A. Kaplan,et al.  In search of insight , 1990, Cognitive Psychology.

[14]  A. Chakrabarti,et al.  Interorganizational transfer of knowledge: an analysis of patent citations of a defense firm , 1991, Technology Management : the New International Language.

[15]  M. Boden The creative mind : myths & mechanisms , 1991 .

[16]  John R. Anderson,et al.  The Adaptive Nature of Human Categorization , 1991 .

[17]  A. Fiske The four elementary forms of sociality: framework for a unified theory of social relations. , 1992, Psychological review.

[18]  Kenneth D. Forbus,et al.  MAC/FAC: A Model of Similarity-Based Retrieval , 1995, Cogn. Sci..

[19]  Michael C. Quick,et al.  Invention and evolution — design in nature and engineering , 1995 .

[20]  Willemien Visser,et al.  Two functions of analogical reasoning in design: a cognitive-psychology approach , 1996 .

[21]  J. S. Wiggins,et al.  An informal history of the interpersonal circumplex tradition. , 1996, Journal of personality assessment.

[22]  D. Gentner,et al.  Structure mapping in analogy and similarity. , 1997 .

[23]  Alice M. Agogino,et al.  Text analysis for constructing design representations , 1997, Artif. Intell. Eng..

[24]  T. Landauer,et al.  A Solution to Plato's Problem: The Latent Semantic Analysis Theory of Acquisition, Induction, and Representation of Knowledge. , 1997 .

[25]  Ashok K. Goel Design, Analogy, and Creativity , 1997, IEEE Expert.

[26]  Kenneth D. Forbus,et al.  Analogy and creativity in the works of Johannes Kepler , 1997 .

[27]  K. Dunbar How scientists think: On-line creativity and conceptual change in science. , 1997 .

[28]  Peter W. Foltz,et al.  The Measurement of Textual Coherence with Latent Semantic Analysis. , 1998 .

[29]  Prabhakar Raghavan,et al.  Scalable feature selection, classification and signature generation for organizing large text databases into hierarchical topic taxonomies , 1998, The VLDB Journal.

[30]  Gabriela Goldschmidt,et al.  Expertise and the use of visual analogy: implications for design education , 1999 .

[31]  K. Wood,et al.  QUANTITATIVE MEASURES FOR DESIGN BY ANALOGY , 2000 .

[32]  Dedre Gentner,et al.  Learning by Analogical Bootstrapping , 2001 .

[33]  John P. Huelsenbeck,et al.  MRBAYES: Bayesian inference of phylogenetic trees , 2001, Bioinform..

[34]  Kristin L. Wood,et al.  Integrating Service-Oriented Design Projects in the Engineering Curriculum , 2002 .

[35]  D. Dahl,et al.  The Influence and Value of Analogical Thinking during New Product Ideation , 2002 .

[36]  L. H. Shu,et al.  Biomimetic Concept Generation Applied to Design for Remanufacture , 2002 .

[37]  Simon Szykman,et al.  A functional basis for engineering design: Reconciling and evolving previous efforts , 2002 .

[38]  Steven M. Smith,et al.  Metrics for measuring ideation effectiveness , 2003 .

[39]  Kimberle Koile,et al.  An Intelligent Assistant for Conceptual Design , 2004 .

[40]  K. Koile AN INTELLIGENT ASSISTANT FOR CONCEPTUAL DESIGN Informed Search Using a Mapping of Abstract Qualities to Physical Form , 2004 .

[41]  Robert Stone,et al.  Capturing Creativity: Using a Design Repository to Drive Concept Innovation , 2005 .

[42]  Shinji Tanaka,et al.  INTERNATIONAL CONFERENCE ON ENGINEERING DESIGN , 2005 .

[43]  Sougata Mukherjea,et al.  Information retrieval and knowledge discovery utilizing a biomedical patent semantic Web , 2005, IEEE Transactions on Knowledge and Data Engineering.

[44]  Shuang Song,et al.  Triangulation of Indicators of Successful Student Design Teams , 2006 .

[45]  Jonathan Cagan,et al.  The Role of Functionality in the Mental Representations of Engineering Students: Some Differences in the Early Stages of Expertise , 2006, Cogn. Sci..

[46]  K. Narasimhan Simplified TRIZ: New Problem‐Solving Applications for Engineers and Manufacturing Professionals , 2006 .

[47]  Moss Jarrod,et al.  Design Ideas and Impasses: the Role of Open Goals , 2007 .

[48]  Bo T. Christensen,et al.  The relationship of analogical distance to analogical function and preinventive structure: the case of engineering design , 2007, Memory & cognition.

[49]  K. Kotovsky,et al.  The influence of open goals on the acquisition of problem-relevant information. , 2007, Journal of experimental psychology. Learning, memory, and cognition.

[50]  M. V. Velzen,et al.  Self-organizing maps , 2007 .

[51]  Ruihong Zhang,et al.  A conceptual design model using axiomatic design, functional basis and TRIZ , 2007, 2007 IEEE International Conference on Industrial Engineering and Engineering Management.

[52]  K.V. Indukuri,et al.  Similarity Analysis of Patent Claims Using Natural Language Processing Techniques , 2007, International Conference on Computational Intelligence and Multimedia Applications (ICCIMA 2007).

[53]  Kas Kasravi,et al.  Patent Mining - Discover y of Business Value from Patent Repositor ies , 2007, 2007 40th Annual Hawaii International Conference on System Sciences (HICSS'07).

[54]  K. Anusudha,et al.  A Robust Digital Watermarking of Satellite Image at Third Level DWT Decomposition , 2007, International Conference on Computational Intelligence and Multimedia Applications (ICCIMA 2007).

[55]  Arthur B. Markman,et al.  Increasing Innovation: A Trilogy of Experiments Towards a Design-by-Analogy Method , 2007 .

[56]  Charles Kemp,et al.  Bayesian models of cognition , 2008 .

[57]  Charles Kemp,et al.  The discovery of structural form , 2008, Proceedings of the National Academy of Sciences.

[58]  Arthur B. Markman,et al.  Modality and representation in analogy , 2008, Artificial Intelligence for Engineering Design, Analysis and Manufacturing.

[59]  Arthur B. Markman,et al.  INCREASING INNOVATION: PRESENTATION AND EVALUATION OF THE WORDTREE DESIGN- BY-ANALOGY METHOD , 2008 .

[60]  Arthur B. Markman,et al.  Wordtrees: A Method For Design By Analogy , 2008 .

[61]  Alice M. Agogino,et al.  Analogies and metaphors in creative design , 2008 .

[62]  Jonathan Cagan,et al.  The role of timing and analogical similarity in the stimulation of idea generation in design , 2008 .

[63]  Kristin L. Wood,et al.  Tools for Innovation , 2009 .

[64]  Patrick F. Reidy An Introduction to Latent Semantic Analysis , 2009 .

[65]  Robert W. Weisberg,et al.  On “Out-of-the-Box” Thinking in Creativity , 2009 .

[66]  Thomas Ertl,et al.  Iterative integration of visual insights during patent search and analysis , 2009, 2009 IEEE Symposium on Visual Analytics Science and Technology.

[67]  Arthur B. Markman,et al.  Supporting Innovation by Promoting Analogical Reasoning , 2009 .

[68]  R. Crawford,et al.  Influences And Interests In Humanitarian Engineering , 2010 .

[69]  Ashok K. Goel,et al.  A content account of creative analogies in biologically inspired design , 2010, Artificial Intelligence for Engineering Design, Analysis and Manufacturing.

[70]  Karl T. Ulrich,et al.  Idea Generation and the Quality of the Best Idea , 2009, Manag. Sci..

[71]  Jonathan Cagan,et al.  A Study of Design Fixation, Its Mitigation and Perception in Engineering Design Faculty , 2010 .

[72]  David W. Rosen,et al.  The effects of biological examples in idea generation , 2010 .

[73]  Jonathan Cagan,et al.  A METHODOLOGY FOR DISCOVERING STRUCTURE IN DESIGN DATABASES , 2011 .

[74]  Jonathan Cagan,et al.  On the benefits and pitfalls of analogies for innovative design : Ideation performance based on analogical distance, commonness, and modality of examples , 2011 .

[75]  Jonathan Cagan,et al.  Discovering Structure in Design Databases Through Functional and Surface Based Mapping , 2013 .

[76]  Hal B. Gregersen,et al.  The innovator's DNA: mastering the five skills of disruptive innovators , 2011 .

[77]  Jeremy Thomas Murphy Patent-based analogy search tool for innovative concept generation , 2011 .

[78]  Thomas Ertl,et al.  Iterative Integration of Visual Insights during Scalable Patent Search and Analysis , 2011, IEEE Transactions on Visualization and Computer Graphics.

[79]  Arthur B. Markman,et al.  Design by Analogy: A Study of the WordTree Method for Problem Re-Representation , 2012 .

[80]  Katherine Fu Discovering and Exploring Structure in Design Databases and Its Role in Stimulating Design by Analogy , 2012 .

[81]  Jonathan Cagan,et al.  THE MEANING OF "NEAR" AND "FAR": THE IMPACT OF STRUCTURING DESIGN DATABASES AND THE EFFECT OF DISTANCE OF ANALOGY ON DESIGN OUTPUT , 2012 .

[82]  T. McCaffrey Innovation Relies on the Obscure , 2012, Psychological science.

[83]  J. Piaget,et al.  The early growth of logic in the child : classification and seriation , 1965 .