A Quotidian Revolution: Artificial Intelligence and Trade Mark Law

Forthcoming in Ryan Abbott (ed), Research Handbook on Intellectual Property and Artificial Intelligence (Edward Elgar, 2022).

21 Pages Posted: 17 Apr 2022

See all articles by Dev Saif Gangjee

Dev Saif Gangjee

Faculty of Law, University of Oxford

Date Written: April 11, 2022

Abstract

In a subtle yet impactful way, artificial intelligence (AI) algorithms have made considerable inroads into the everyday practice of trade mark law. The appeal of this technology lies in its ability to keep pace with the high-pressure hosepipe of trade mark applications and the ever-growing corpus of registered trade marks globally. More marks mean more registrability assessments and more conflicts. Machine learning technologies are therefore being used to assist applicants with registration requirements, help examiners classify signs, and help established right-holders (or new applicants) identify conflicts when new marks are applied for. AI is also entering the domain of enforcement, where it is used to identify unauthorised uses of marks online, including on social media platforms. This new technology is often presented as merely assisting with the implementation of existing procedures, rules and doctrines of trade mark law. It appears to be business as usual, just done more efficiently. This chapter sets out to challenge this assumption, by identifying some of the more subtle implications and ripple effects of this transformation of the everyday working of trade mark law – at scale – in the registration and enforcement domains.

Keywords: Trade marks, registration, algorithmic enforcement, machine learning, clearance, trademark search

Suggested Citation

Gangjee, Dev S., A Quotidian Revolution: Artificial Intelligence and Trade Mark Law (April 11, 2022). Forthcoming in Ryan Abbott (ed), Research Handbook on Intellectual Property and Artificial Intelligence (Edward Elgar, 2022)., Available at SSRN: https://ssrn.com/abstract=4081317 or http://dx.doi.org/10.2139/ssrn.4081317

Dev S. Gangjee (Contact Author)

Faculty of Law, University of Oxford ( email )

St Hilda's College
Cowley Place
Oxford, OX4 1DY
United Kingdom

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