Emergent Mind

Dynamic Algorithmic Service Agreements Perspective

(1912.04947)
Published Dec 10, 2019 in cs.CY

Abstract

A multi-disciplinary understanding of the concepts of identity, agency, relationships, interactions, and information could help us develop mitigation strategies for responsible human-algorithmic systems in the field of AI. It is imperative for us to question the use of the Terms of Service (ToS) agreements model in the context of algorithmic systems, specifically AI systems that make decisions which affect people and their livelihoods. In this position paper, we identify five areas of concern in traditional ToS agreements by drawing on studies of sociotechnical systems in Science and Technology Studies - accommodating and enabling change, co-constitution, reflective directionality, friction, and generativity. We aim to address these ToS shortcomings and propose components of a novel Dynamic Algorithmic Service Agreements (DASA) framework. The DASA could be employed as a self-regulation framework while also enabling additional feedback loops between people and algorithmic systems. Rich interaction frameworks could enable us to better negotiate and cooperate with AI systems towards accomplishing the real-world goals we use them for. We illustrate the DASA framework in the context of a Recommender System used in the curation of real and synthetic data. We do not intend for the DASA framework to replace the ToS model, but instead think it will provide practitioners with an alternative point of view for the design of dynamic interaction interfaces for AI systems that account for human identity and agency.

We're not able to analyze this paper right now due to high demand.

Please check back later (sorry!).

Generate a summary of this paper on our Pro plan:

We ran into a problem analyzing this paper.

Newsletter

Get summaries of trending comp sci papers delivered straight to your inbox:

Unsubscribe anytime.