Title :
Feedback Matching Framework for Semantic Interoperability of Product Data
Author :
Yeo, Il ; Patil, Lalit ; Dutta, Debasish
Author_Institution :
Microsoft Corp., Redmond, WA, USA
fDate :
4/1/2012 12:00:00 AM
Abstract :
There is a need to promote drastically increased levels of interoperability of product data across a broad spectrum of stakeholders, while ensuring that the semantics of product knowledge are preserved, and when necessary, translated. In order to achieve this, multiple methods have been proposed to determine semantic maps across concepts from different representations. Previous research has focused on developing different individual matching methods, i.e., ones that compute mapping based on a single matching measure. These efforts assume that some weighted combination can be used to obtain the overall maps. We analyze the problem of combination of multiple individual methods to determine requirements specific to product development and propose a solution approach called FEedback Matching Framework with Implicit Training (FEMFIT). FEMFIT provides the ability to combine the different matching approaches using ranking Support Vector Machine (ranking SVM). The method accounts for nonlinear relations between the individual matchers. It overcomes the need to explicitly train the algorithm before it is used, and further reduces the decision-making load on the domain expert by implicitly capturing the expert´s decisions without requiring him to input real numbers on similarity. We apply FEMFIT to a subset of product constraints across a commercial system and the ISO standard. We observe that FEMIT demonstrates better accuracy (average correctness of the results) and stability (deviation from the average) in comparison with other existing combination methods commonly assumed to be valid in this domain.
Keywords :
open systems; product life cycle management; production engineering computing; semantic networks; support vector machines; FEMFIT; ISO standard; decision-making load reduction; feedback matching framework-with-implicit training; product data; product development; product knowledge semantics; product lifecycle management; ranking SVM; ranking support vector machine; semantic interoperability; semantic maps; Design automation; Product development; Semantics; Software; Support vector machines; Training; Vectors; Concept matching; product lifecycle management (PLM); ranking support vector machine (SVM); semantic interoperability;
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2011.2171950