UniRank unifies autoregressive and non-autoregressive list-wise reranking via bidirectional modeling in a confidence-ordered iterative denoising process, outperforming baselines on datasets and online tests.
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A simple graph heuristic without training or sequence encoders matches or outperforms trained generative recommenders on 10 of 14 sequential recommendation benchmarks by exploiting local transition and feature shortcuts.
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UniRank: Unified List-wise Reranking via Confidence-Ordered Denoising
UniRank unifies autoregressive and non-autoregressive list-wise reranking via bidirectional modeling in a confidence-ordered iterative denoising process, outperforming baselines on datasets and online tests.
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An Embarrassingly Simple Graph Heuristic Reveals Shortcut-Solvable Benchmarks for Sequential Recommendation
A simple graph heuristic without training or sequence encoders matches or outperforms trained generative recommenders on 10 of 14 sequential recommendation benchmarks by exploiting local transition and feature shortcuts.