CLAIIRDec 2, 2025

ADORE: Autonomous Domain-Oriented Relevance Engine for E-commerce

arXiv:2512.02555v15 citationsh-index: 2SIGIR
Originality Highly original
AI Analysis

This addresses the problem of semantic gaps and data scarcity in e-commerce search relevance for industrial applications, representing a new paradigm rather than an incremental improvement.

The paper tackled relevance modeling in e-commerce search by proposing ADORE, a self-sustaining framework that automates annotation, adversarial generation, and distillation to overcome data scarcity, achieving verified effectiveness through large-scale experiments and online A/B testing.

Relevance modeling in e-commerce search remains challenged by semantic gaps in term-matching methods (e.g., BM25) and neural models' reliance on the scarcity of domain-specific hard samples. We propose ADORE, a self-sustaining framework that synergizes three innovations: (1) A Rule-aware Relevance Discrimination module, where a Chain-of-Thought LLM generates intent-aligned training data, refined via Kahneman-Tversky Optimization (KTO) to align with user behavior; (2) An Error-type-aware Data Synthesis module that auto-generates adversarial examples to harden robustness; and (3) A Key-attribute-enhanced Knowledge Distillation module that injects domain-specific attribute hierarchies into a deployable student model. ADORE automates annotation, adversarial generation, and distillation, overcoming data scarcity while enhancing reasoning. Large-scale experiments and online A/B testing verify the effectiveness of ADORE. The framework establishes a new paradigm for resource-efficient, cognitively aligned relevance modeling in industrial applications.

Foundations

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