CYAILGJun 11, 2023

Unraveling the Interconnected Axes of Heterogeneity in Machine Learning for Democratic and Inclusive Advancements

arXiv:2306.10043v12 citationsh-index: 32
Originality Synthesis-oriented
AI Analysis

It addresses the problem of ensuring democratic and inclusive ML development for society by highlighting the need for holistic consideration of these axes.

The study identifies three interdependent axes of heterogeneity—values/culture/regulations, data composition, and resource/infrastructure capacity—that influence machine learning products, showing how current fragmented approaches lead to power concentration and impractical solutions.

The growing utilization of machine learning (ML) in decision-making processes raises questions about its benefits to society. In this study, we identify and analyze three axes of heterogeneity that significantly influence the trajectory of ML products. These axes are i) values, culture and regulations, ii) data composition, and iii) resource and infrastructure capacity. We demonstrate how these axes are interdependent and mutually influence one another, emphasizing the need to consider and address them jointly. Unfortunately, the current research landscape falls short in this regard, often failing to adopt a holistic approach. We examine the prevalent practices and methodologies that skew these axes in favor of a selected few, resulting in power concentration, homogenized control, and increased dependency. We discuss how this fragmented study of the three axes poses a significant challenge, leading to an impractical solution space that lacks reflection of real-world scenarios. Addressing these issues is crucial to ensure a more comprehensive understanding of the interconnected nature of society and to foster the democratic and inclusive development of ML systems that are more aligned with real-world complexities and its diverse requirements.

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