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

Abstract

Theft of intellectual property is a growing problem—one that is exacerbated by the fact that a successful compromise of an enterprise might only become known months after the hack. A recent solution called FORGE addresses this problem by automatically generating N “fake” versions of any real document so that the attacker has to determine which of the N + 1 documents that they have exfiltrated from a compromised network is real. In this article, we remove two major drawbacks in FORGE: (i) FORGE requires ontologies in order to generate fake documents—however, in the real world, ontologies, especially good ontologies, are infrequently available. The WE-FORGE system proposed in this article completely eliminates the need for ontologies by using distance metrics on word embeddings instead. (ii) FORGE generates fake documents by first identifying “target” concepts in the original document and then substituting “replacement” concepts for them. However, we will show that this can lead to sub-optimal results (e.g., as target concepts are selected without knowing the availability and/or quality of the replacement concepts, they can sometimes lead to poor results). Our WE-FORGE system addresses this problem in two possible ways by performing a joint optimization to select concepts and replacements simultaneously. We conduct a human study involving both computer science and chemistry documents and show that WE-FORGE successfully deceives adversaries.

Document Details

Document Type
Pub Defense Publication
Publication Date
Feb 02, 2021
Source ID
10.1145/3418289

Entities

People

  • Almas Abdibayev
  • Deepti Poluru
  • Dongkai Chen
  • Haipeng Chen
  • V. S. Subrahmanian

Organizations

  • Dartmouth College
  • Office of Naval Research

Tags

Fields of Study

  • Computer science

Readers

  • Cybersecurity.
  • Educational Psychology
  • Neural Network Machine Learning.