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| author | Yuren Hao <97327730+YurenHao0426@users.noreply.github.com> | 2025-07-24 05:10:34 -0700 |
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| committer | Yuren Hao <97327730+YurenHao0426@users.noreply.github.com> | 2025-07-24 05:10:34 -0700 |
| commit | 7b1993d9f33da11e4b2b731b525e9ea6a2cd8026 (patch) | |
| tree | 5edf5cb876c362498f0bea8ba210132d37b6bc2a /README.md | |
| parent | f020690786d6aa312c7c4898a72448d569388084 (diff) | |
Auto-update: Added 1 new papers on 2025-07-24
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@@ -26,6 +26,24 @@ + + +## Papers Updated on 2025-07-24 12:10 UTC + +### BGM-HAN: A Hierarchical Attention Network for Accurate and Fair Decision Assessment on Semi-Structured Profiles + +**Authors:** Junhua Liu, Roy Ka-Wei Lee, Kwan Hui Lim + +**Categories:** cs.LG, cs.AI, cs.IR + +**Published:** 2025-07-23T12:52:38Z + +**Abstract:** Human decision-making in high-stakes domains often relies on expertise and heuristics, but is vulnerable to hard-to-detect cognitive biases that threaten fairness and long-term outcomes. This work presents a novel approach to enhancing complex decision-making workflows through the integration of hierarchical learning alongside various enhancements. Focusing on university admissions as a representative high-stakes domain, we propose BGM-HAN, an enhanced Byte-Pair Encoded, Gated Multi-head Hierarchical Attention Network, designed to effectively model semi-structured applicant data. BGM-HAN captures multi-level representations that are crucial for nuanced assessment, improving both interpretability and predictive performance. Experimental results on real admissions data demonstrate that our proposed model significantly outperforms both state-of-the-art baselines from traditional machine learning to large language models, offering a promising framework for augmenting decision-making in domains where structure, context, and fairness matter. Source code is available at: https://github.com/junhua/bgm-han. + +**Link:** [arXiv:2507.17472v1](http://arxiv.org/abs/2507.17472v1) + +--- + ## Papers Updated on 2025-07-22 12:10 UTC ### Surfacing Variations to Calibrate Perceived Reliability of MLLM-generated Image Descriptions |
