AILGMay 3, 2024

Non-linear Welfare-Aware Strategic Learning

arXiv:2405.01810v313 citationsh-index: 5AIES
Originality Incremental advance
AI Analysis

It addresses the challenge of balancing multiple welfare objectives in strategic learning for decision-makers and agents, but is incremental as it extends prior linear-focused work to non-linear settings.

This paper tackles the problem of algorithmic decision-making with strategic agents in non-linear settings, showing that simultaneously maximizing decision-maker, social, and agent welfare is only possible under restrictive conditions, and proposes an optimization algorithm that balances these objectives, validated with experiments on synthetic and real data.

This paper studies algorithmic decision-making in the presence of strategic individual behaviors, where an ML model is used to make decisions about human agents and the latter can adapt their behavior strategically to improve their future data. Existing results on strategic learning have largely focused on the linear setting where agents with linear labeling functions best respond to a (noisy) linear decision policy. Instead, this work focuses on general non-linear settings where agents respond to the decision policy with only "local information" of the policy. Moreover, we simultaneously consider the objectives of maximizing decision-maker welfare (model prediction accuracy), social welfare (agent improvement caused by strategic behaviors), and agent welfare (the extent that ML underestimates the agents). We first generalize the agent best response model in previous works to the non-linear setting, then reveal the compatibility of welfare objectives. We show the three welfare can attain the optimum simultaneously only under restrictive conditions which are challenging to achieve in non-linear settings. The theoretical results imply that existing works solely maximizing the welfare of a subset of parties inevitably diminish the welfare of the others. We thus claim the necessity of balancing the welfare of each party in non-linear settings and propose an irreducible optimization algorithm suitable for general strategic learning. Experiments on synthetic and real data validate the proposed algorithm.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes