What is the problem being addressed?
Rapid advancements in machine learning technologies are transforming social and political life in ways that uniquely challenge how we live in relation to others. The life chances of a person are now intimately connected to the data attributes that an algorithm has learned from the data patterns of unknown others. For example, a person’s attributed creditworthiness in the financial system, or their attributed riskiness in the criminal justice system, is increasingly inferred from the patterns learned from the conduct of other people. Understood in this way, processes of machine learning are always also practices of ethical and social connection with others. However, the technical architectures of machine learning algorithms are not commonly treated as containing normative, political and ethical relations to the world. The ALGOSOC project develops a new approach to understanding and responding to how ML algorithms remake the ethical relations that define a society.
Why is it important for society?
The ALGOSOC project examines how 21st century machine learning algorithms are learning to recognize, attribute, and infer the characteristics of entities (people, objects, and scenes). The forms of recognition, attribution and inference that characterised statistical societies are transforming with new techniques for deep learning and generative AI. For example, machine learning models are increasingly multi-modal in their approach to data from images, text, video or language. They are also increasingly able to traverse domains of the social world, building flexible models that can travel and transfer their learning.
What are the overall objectives?
The overarching project aim of ALGOSOC is to advance a new approach to understanding and responding to the consequences of machine learning algorithms for the norms and ethics of contemporary societies. The aim is underpinned by three research objectives, each of which is designed to address a fundamental aspect of the iterative practices of machine learning and to investigate how specific types of algorithmic process reconfigure ethical relations. T
Objective One: To understand how machine learning algorithms are generating a new societal ethics of recognition.
Objective Two: To analyse the ways in which societal differences are generated and negotiated through machine learning algorithms.
Objective Three: To investigate how machine learning generates inferential models of the future, and to understand the consequences of new forms of inference for the ethical relations of contemporary societies.