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Keyword-based patent citation prediction via information theory
Authors:Farshad Madani  Martin Zwick  Tugrul Daim
Affiliation:1. Department of Engineering and Technology Management, Maseeh College of Engineering and Computer Science, Portland State University, Portland, OR, USAfarshad.madani@gmail.com;3. Systems Science PhD Program, Portland State University, Portland, OR, USA;4. Department of Engineering and Technology Management, Maseeh College of Engineering and Computer Science, Portland State University, Portland, OR, USA
Abstract:ABSTRACT

Patent citation shows how a technology impacts other inventions, so the number of patent citations (backward citations) is used in many technology prediction studies. Current prediction methods use patent citations, but since it may take a long time till a patent is cited by other inventors, identifying impactful patents based on their citations is not an effective way. The prediction method offered in this article predicts patent citations based on the content of patents. In this research, Reconstructability Analysis (RA), which is based on information theory and graph theory, is applied to predict patent citations based on keywords extracted from the abstracts of selected patents. After applying three classes of RA (variable-based analysis without and with loops and state-based analysis), nine specific IV states of a predicting model are extracted. These states involve the four keywords of “chamber”, “hous”, “main”, and “return”. Lastly, the abstracts of the patents are examined to identify the technical subjects relevant to smart building technologies for which these keywords are proxies.
Keywords:Patent mining  patent citation analysis  patent citation prediction  information theory  reconstructability analysis  OCCAM
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