Discrimination in the Age of Artificial Intelligence

  • Internet Governance

Arindrajit Basu

26 October 2018

The dawn of Artificial Intelligence (AI) has been celebrated by both government and industry across the globe. AI offers the potential to augment many existing bureaucratic processes and improve human capacity, if implemented in accordance with principles of the rule of law and international human rights norms. Unfortunately, AI-powered solutions have often been implemented in ways that have resulted in the automation, rather than mitigation, of existing societal inequalities.

This was originally published by Oxford Human Rights Hub on October 23, 2018


Artificial Intelligence

Image Credit: Sarla Catt via Flickr, used under a Creative Commons license available at https://creativecommons.org/licenses/by/2.0/

In the international human rights law context, AI solutions pose a threat to norms which prohibit discrimination. International Human Rights Law recognizes that discrimination may take place in two possible ways, directly or indirectly. Direct discrimination occurs when an individual is treated less favourably than someone else similarly situated on one of the grounds prohibited in international law, which, as per the Human Rights Committee, includes race, colour, sex, language, religion, political or other opinion, national or social origin, property, birth or other status. Indirect discrimination occurs when a policy, rule or requirement is ‘outwardly neutral’ but has a disproportionate impact on certain groups that are meant to be protected by one of the prohibited grounds of discrimination. A clear example of indirect discrimination recognized by the European Court of Human Rights arose in the case of DH&Ors v Czech Republic. The ECtHR struck down an apparently neutral set of statutory rules, which implemented a set of tests designed to evaluate the intellectual capability of children but which resulted in an excessively high proportion of minority Roma children scoring poorly and consequently being sent to special schools, possibly because the tests were blind to cultural and linguistic differences. This case acts as a useful analogy for the potential disparate impacts of AI and should serve as useful precedent for future litigation against AI-driven solutions.

Indirect discrimination by AI may occur at two stages. First is the usage of incomplete or inaccurate training data that results in the algorithm processing data that may not accurately reflect reality. Cathy O’Neil explains this using a simple example. There are two types of crimes-those that are ‘reported’ and others that are only ‘found’ if a policeman is patrolling the area. The first category includes serious crimes such as murder or rape while the second includes petty crimes such as vandalism or possession of illicit drugs in small quantities. Increased police surveillance in areas in US cities where Black or Hispanic people reside lead to more crimes being ‘found’ there. Thus, data is likely to suggest that these communities commit a higher proportion of crimes than they actually do – indirect discrimination that has been empirically been shown through research published by Pro Publica.

Discrimination may also occur at the stage of data processing, which is done through a metaphorical ‘black-box’ that accepts inputs and generates outputs without revealing to the human developer how the data was processed. This conundrum is compounded by the fact that the algorithms are often utilised to solve an amorphous problem-which attempts to break down a complex question into a simple answer. An example is the development of ‘risk profiles’ of individuals for the  determination of insurance premiums. Data might show that an accident is more likely to take place in inner cities due  to more densely packed populations in these areas. Racial and ethnic minorities tend to reside more in these areas, which means that algorithms could learn that minorities are more likely to get into accidents, thereby generating an outcome (‘risk profile’) that indirectly discriminates on grounds of race or ethnicity.

It would be wrong to ignore discrimination, both direct and indirect, that occurs as a result of human prejudice. The key difference between that and discrimination by AI lies in the ability of other individuals to compel the decision-maker to explain the factors that lead to the outcome in question and testing its validity against principles of human rights. The increasing amounts of discretion and, consequently, power being delegated to autonomous systems mean that principles of accountability which audit and check indirect discrimination need to be built into the design of these systems. In the absence of these principles, we risk surrendering core tenets of human rights law to the whims of an algorithmically crafted reality.

Related Events

Sorted By Date

Telecom

Judicial Trends: How Courts Applied the Proportionality Test

This is the second in a series of essays aimed at studying the different ways in which apex courts have evaluated national biometric digital ID programs of their countries.

Event

23 March 2024
Read more

Access to Knowledge

Information Disorders & their Regulation

The Indian media and digital sphere, perhaps a crude reflection of the socio-economic realities of the Indian political landscape, presents a unique and challenging setting for studying information disorders.

Event

5 MB
Read more

Digital Cultures

Security of Open Source Software

A Survey of Technical Stakeholders’ Perceptions and Actions

Event

2.5 MB
Read more

Access to Knowledge

Global Accessibility Awareness Day 2017

The Centre for Internet & Society along with Prakat Solutions and Mitra Jyothi is co-hosting the Global Accessibility Awareness Day in Bengaluru on May 18, 2017.

Event

18 May 2017
Read more