DocumentCode
2584008
Title
Mixed representations of science and technology data for use in the management of technology
Author
Cunningham, Scott W. ; Kwakkel, Jan
Author_Institution
Fac. of Technol. Policy & Manage., Delft Univ. of Technol., Delft
fYear
2008
fDate
27-31 July 2008
Firstpage
1514
Lastpage
1522
Abstract
In this paper we examine effective representations of knowledge for the purposes of management of engineering and technology. Specifically, given the immense volume of data available about scientific outputs, it is highly necessary to condense or abstract this information for management use. This paper considers the utility of such representations in the management of technology. We ask further whether a given representation accurately depicts the knowledge contained in the science and technology database. We argue that, in this regard, generative models are superior because they provide explicit hypotheses about the structuring of the data. The second is whether the representation is interpretable by management, and therefore directly actionable. We argue that the number of model parameters is an indirect measure of the degree of difficulty of using and interpreting the selected representation. Combining the two metrics suggests the use of Akaike´s Information Criteria, a metric used for model selection purposes. The AIC is used to evaluate existing model representations used in tech mining, both positional and relational. After surveying the results, we recommend the use of a mixed representation. These more complex models appear to offer a more useful representation of science and technology datasets. Furthermore there are multiple promising but previously unexplored representations of the data. The ramifications of further exploration within this range of possible new models is discussed.
Keywords
data structures; knowledge management; technology management; Akaike Information Criteria; data structure; engineering management; generative models; knowledge representation; model representation; model selection; science and technology data representation; tech mining; technology management; Africa; Cities and towns; Data engineering; Databases; Engineering management; Information management; Knowledge engineering; Knowledge management; Technology management; Uncertainty;
fLanguage
English
Publisher
ieee
Conference_Titel
Management of Engineering & Technology, 2008. PICMET 2008. Portland International Conference on
Conference_Location
Cape Town
Print_ISBN
978-1-890843-17-5
Electronic_ISBN
978-1-890843-18-2
Type
conf
DOI
10.1109/PICMET.2008.4599768
Filename
4599768
Link To Document