Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

The Reciprocity Gradient

About

Communication is fundamental to sustaining reciprocity and cooperation in strategic interactions. We identify and formulate the influence attribution problem as the central optimization difficulty inherent in such dynamics for a learning agent: any action or signal the agent emits reshapes the reputations of many third parties along combinatorially branching paths before feeding back into its own future rewards, forcing the agent to account for all of these indirect channels at once when choosing every action. To address this, we introduce the reciprocity gradient, which explicitly backpropagates reward gradients through private estimators of opponents' policies trained from public observations. The gradient flows through the reputation chain itself analytically, rather than being estimated from sampled returns. It jointly optimizes actions and evaluative signals without intrinsic rewards or reward shaping. Empirically, the method recovers near-optimal context-sensitive policies, while sample-based baselines collapse into constant-output policies.

Yue Lin, Pascal Poupart, Shuhui Zhu, Dan Qiao, Wenhao Li, Yuan Liu, Hongyuan Zha, Baoxiang Wang• 2026

Related benchmarks

TaskDatasetResultRank
Strategic Interaction Optimization (Constant Response)Indirect Reciprocity Degenerate Regimes
Reference Performance95
12
Action-component payoff optimizationL3 warmup (off-diagonal)
Per-Interaction Payoff4.17
8
Strategic Interaction Optimization (State-Dependent Response)Indirect Reciprocity Discriminative Regimes
Reference Adherence Rate99
6
Action-component payoff optimizationHybridCoop+AllD (off-diagonal)--
6
Simultaneous OptimizationHybridCoop+AllD Flagship setting (full-cooperation reference 2.25)
Per-interaction Payoff2.24
5
Action-component payoff optimizationL6 warmup discriminative cell
Per-interaction Payoff3.94
4
Joint action and signal payoff optimizationL6 warmup (off-diagonal)
Payoff (Per Interaction)3.65
4
Joint action and signal payoff optimizationHybridCoop+AllD Headline discriminative cell
Per-interaction Payoff2.225
4
Payoff EvaluationContinuous-action donation game Action vs L6, indirect-only matching (test)
Per-interaction Payoff3.06
4
Payoff EvaluationContinuous-action donation game Signal vs ProudCoop+AllD, indirect-only matching (test)
Per-interaction Payoff1.76
4
Showing 10 of 13 rows

Other info

Follow for update