A Psycholinguistics-inspired Method to Counter IP Theft Using Fake Documents

Author:

Denisenko Natalia1ORCID,Zhang Youzhi2ORCID,Pulice Chiara1ORCID,Bhattasali Shohini3ORCID,Jajodia Sushil4ORCID,Resnik Philip5ORCID,Subrahmanian V.S.6ORCID

Affiliation:

1. Department of Computer Science and Buffett Institute for Global Affairs, Northwestern University, Evanston, USA

2. Centre for Artificial Intelligence and Robotics, Hong Kong Institute of Science & Innovation, Chinese Academy of Sciences, Hong Kong, Hong Kong

3. Department of Language Studies, University of Toronto Scarborough and Department of Linguistics, University of Toronto, Toronto, Canada

4. Center for Secure Information Systems, George Mason University, Fairfax, United States

5. Department of Linguistics/UMIACS, University of Maryland, College Park, United States

6. Department of Computer Science and Buffett Institute for Global Affairs, Northwestern University, Evanston, United States

Abstract

Intellectual property (IP) theft is a growing problem. We build on prior work to deter IP theft by generating n fake versions of a technical document so a thief has to expend time and effort in identifying the correct document. Our new SbFAKE framework proposes, for the first time, a novel combination of language processing, optimization, and the psycholinguistic concept of surprisal to generate a set of such fakes. We start by combining psycholinguistic-based surprisal scores and optimization to generate two bilevel surprisal optimization problems (an Explicit one and a simpler Implicit one) whose solutions correspond directly to the desired set of fakes. As bilevel problems are usually hard to solve, we then show that these two bilevel surprisal optimization problems can each be reduced to equivalent surprisal-based linear programs. We performed detailed parameter tuning experiments and identified the best parameters for each of these algorithms. We then tested these two variants of SbFAKE (with their best parameter settings) against the best performing prior work in the field. Our experiments show that SbFAKE is able to more effectively generate convincing fakes than past work. In addition, we show that replacing words in an original document with words having similar surprisal scores generates greater levels of deception.

Funder

ONR

Publisher

Association for Computing Machinery (ACM)

Reference51 articles.

1. Using Word Embeddings to Deter Intellectual Property Theft through Automated Generation of Fake Documents

2. The Influence of Visual Uncertainty on Word Surprisal and Processing Effort

3. Yu Aoike, Masaki Kamizono, Masashi Eto, Noriko Matsumoto, and Norihiko Yoshida. 2021. Decoy-file-based deception without usability degradation. In IEEE Asia-Pacific Conference on Computer Science and Data Engineering (CSDE’21). IEEE, 1–7.

4. Using surprisal and fMRI to map the neural bases of broad and local contextual prediction during natural language comprehension

5. Parsing costs as predictors of reading difficulty: An evaluation using the Potsdam sentence corpus;Boston Marisa Ferrara;J. Eye Movem. Res.,2008

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