Debiased Negative Mining Improves Out-of-distribution Detection with Pre-trained Vision-Language Models
Pith reviewed 2026-05-25 04:47 UTC · model grok-4.3
The pith
Debiased negative mining converts to Monte-Carlo sampling from ID labels and wild data to improve VLM-based OOD detection.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The central claim is that a theoretical framework for correcting the sampling bias of negative labels by indirectly approximating their distribution allows the debiased negative mining procedure to be converted into Monte-Carlo sampling based on ID labels and the unlabeled wild corpus data, which establishes a new state-of-the-art across a variety of OOD detection setups that use pre-trained vision-language models.
What carries the argument
Theoretical framework that corrects sampling bias of negative labels by indirectly approximating their distribution and thereby converts debiased mining into Monte-Carlo sampling.
If this is right
- The method achieves new state-of-the-art results in multiple OOD detection setups that rely on pre-trained vision-language models.
- It directly mitigates the false negative problem that arises when mining negative labels from unlabeled wild corpus data.
- It operates using only ID labels and the unlabeled wild corpus without requiring any target OOD labels.
- It improves post-hoc OOD scoring that examines affinities between inputs and both ID and negative labels.
Where Pith is reading between the lines
- The Monte-Carlo formulation could simplify deployment in settings where wild unlabeled data is abundant but labeled OOD examples are scarce.
- Similar bias-correction steps might transfer to other label-mining tasks that use pre-trained models for anomaly or novelty detection.
- Testing the approach on non-vision modalities or different VLM architectures would check whether the sampling conversion remains effective.
- The framework may connect to existing sampling techniques used in semi-supervised learning or active learning.
Load-bearing premise
The sampling bias of negative labels can be corrected by indirectly approximating the distribution of negative labels via the proposed theoretical framework.
What would settle it
Apply the Monte-Carlo sampling version to standard OOD benchmarks and measure whether it outperforms heuristic negative mining; failure to improve or to reduce the false-negative rate would falsify the central claim.
Figures
read the original abstract
Aiming at identifying unexpected inputs from unknown classes, out-of-distribution (OOD) detection has emerged as a pivotal approach to enhancing the reliability of machine learning models. This paper focuses on the burgeoning paradigm of post-hoc OOD detection with pre-trained vision-language models (VLMs), where a popular pipeline is to detect OOD inputs by examining their affinities between ID labels and negative labels, i.e., those semantically different from ID labels. Due to the unavailability of target OOD labels, existing works predominantly rely on heuristic rules to mine negative labels from unlabeled wild corpus data. Despite the empirical success, we argue that the power of VLM-based OOD detection has yet to be fully unleashed since the notorious false negative problem is far from addressed in the literature. With this motivation, we are interested in addressing the challenge of mining true negative labels for OOD scoring. To this end, we develop a theoretical framework for correcting the sampling bias of negatives labels by indirectly approximating the distribution of negative labels. Perhaps surprisingly, we show that the debiased negative mining can be naturally converted into Monte-Carlo sampling based on ID labels and the unlabeled wild corpus data. Extensive experiments empirically manifest that our method establishes a new state-of-the-art in a variety of OOD detection setups. Code is publicly available at \href{https://github.com/60pen9/Debiased-Negative-Mining-Improves-OOD-Detection-with-Pre-trained-VLMs}{\textcolor{red}{here}}.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper proposes a theoretical framework to correct sampling bias when mining negative labels from unlabeled wild corpus data for post-hoc OOD detection with pre-trained VLMs. It claims that this debiased approach converts naturally into Monte-Carlo sampling using only ID labels and the wild corpus, and reports new state-of-the-art empirical results across multiple OOD detection setups.
Significance. If the central theoretical approximation holds, the work could strengthen VLM-based OOD detection by addressing false negatives in negative mining, with relevance to reliability in deployed systems. The conversion to observable-data Monte-Carlo sampling (if rigorously established) and the public code release are clear strengths supporting reproducibility.
major comments (1)
- [theoretical framework (abstract and main derivation)] Abstract and theoretical framework section: the claim that debiased negative mining 'can be naturally converted into Monte-Carlo sampling' rests on an indirect approximation of the negative-label distribution. No explicit bound, convergence argument, or factorization assumption verification is supplied to guarantee that the resulting estimator remains unbiased when the wild corpus contains residual semantic overlap with ID classes or when VLM similarities exhibit heavy tails.
minor comments (2)
- [Abstract] Abstract: 'empirically manifest' is nonstandard phrasing; 'demonstrate' or 'show' would be clearer.
- [theoretical framework] The manuscript should clarify the precise conditions under which the Monte-Carlo estimator is unbiased, ideally with a short lemma or proposition.
Simulated Author's Rebuttal
We thank the referee for the careful review and constructive feedback on the theoretical framework. We address the major comment below.
read point-by-point responses
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Referee: [theoretical framework (abstract and main derivation)] Abstract and theoretical framework section: the claim that debiased negative mining 'can be naturally converted into Monte-Carlo sampling' rests on an indirect approximation of the negative-label distribution. No explicit bound, convergence argument, or factorization assumption verification is supplied to guarantee that the resulting estimator remains unbiased when the wild corpus contains residual semantic overlap with ID classes or when VLM similarities exhibit heavy tails.
Authors: The derivation begins from the target debiased distribution over true negative labels and rewrites the relevant expectation by conditioning on the observable wild corpus and ID labels, yielding the Monte-Carlo estimator via the law of total expectation. The step relies on the modeling assumption that negatives are those with low VLM similarity to any ID class. We acknowledge that the manuscript supplies neither explicit error bounds on the approximation nor a verification of the factorization under residual semantic overlap or heavy-tailed similarities; these are genuine limitations of the current presentation. We will revise the theoretical framework section to include an expanded discussion of the modeling assumptions, the conditions under which the estimator remains approximately unbiased, and the potential bias introduced by overlap or heavy tails. revision: yes
Circularity Check
No circularity: derivation rests on independent theoretical approximation
full rationale
The paper presents a theoretical framework that corrects sampling bias via indirect approximation of negative label distribution, then converts the debiased mining into Monte-Carlo sampling using ID labels and wild corpus data. No equations, self-citations, or fitted parameters are shown reducing the central claim to its inputs by construction. The conversion is framed as a derived consequence of the framework rather than a renaming or self-referential fit, leaving the method self-contained against external benchmarks.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption The distribution of negative labels can be indirectly approximated from ID labels and unlabeled wild corpus data to correct sampling bias.
Lean theorems connected to this paper
-
IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
we develop a theoretical framework for correcting the sampling bias of negatives labels by indirectly approximating the distribution of negative labels... debiased negative mining can be naturally converted into Monte-Carlo sampling
-
IndisputableMonolith/Foundation/RealityFromDistinction.leanreality_from_one_distinction unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
Definition 1 (Wild Data Distribution)... P⁻_Y = (Q_Y − τ·P⁺_Y)/(1−τ)
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
Reference graph
Works this paper leans on
-
[1]
Chunchun Chen, Wenjie Zhu, and Bo Peng. Differentiated graph regularized non-negative matrix factor- ization for semi-supervised community detection.Physica A: Statistical Mechanics and its Applications, 604:127692, 2022
work page 2022
-
[2]
Towards robust community detection via extreme adversarial attacks
Chunchun Chen, Wenjie Zhu, Bo Peng, and Huijuan Lu. Towards robust community detection via extreme adversarial attacks. In2022 26th International Conference on Pattern Recognition (ICPR), pp. 2231–
-
[3]
Mengyuan Chen, Junyu Gao, and Changsheng Xu. Conjugated semantic pool improves ood detection with pre-trained vision-language models.Advances in Neural Information Processing Systems, 37:82560– 82593, 2024
work page 2024
-
[4]
Zixiang Chen, Yihe Deng, Yuanzhi Li, and Quanquan Gu. Understanding transferable representation learning and zero-shot transfer in clip.arXiv preprint arXiv:2310.00927, 2023
-
[5]
Describing textures in the wild
Mircea Cimpoi, Subhransu Maji, Iasonas Kokkinos, Sammy Mohamed, and Andrea Vedaldi. Describing textures in the wild. InProceedings of the IEEE conference on computer vision and pattern recognition, pp. 3606–3613, 2014
work page 2014
-
[6]
Imagenet: A large-scale hierarchi- cal image database
Jia Deng, Wei Dong, Richard Socher, Li-Jia Li, Kai Li, and Li Fei-Fei. Imagenet: A large-scale hierarchi- cal image database. In2009 IEEE conference on computer vision and pattern recognition, pp. 248–255. Ieee, 2009
work page 2009
-
[7]
Reducing network agnostophobia.Advances in Neural Information Processing Systems, 31, 2018
Akshay Raj Dhamija, Manuel G ¨unther, and Terrance Boult. Reducing network agnostophobia.Advances in Neural Information Processing Systems, 31, 2018
work page 2018
-
[8]
Towards unknown-aware learning with virtual outlier synthesis
Xuefeng Du, Zhaoning Wang, Mu Cai, and Sharon Li. Towards unknown-aware learning with virtual outlier synthesis. InInternational Conference on Learning Representations, volume 1, pp. 5, 2022
work page 2022
-
[9]
Vos: Learning what you don't know by virtual outlier synthesis
Xuefeng Du, Zhaoning Wang, Mu Cai, and Yixuan Li. V os: Learning what you don’t know by virtual outlier synthesis.arXiv preprint arXiv:2202.01197, 2022
-
[10]
Xuefeng Du, Zhen Fang, Ilias Diakonikolas, and Yixuan Li. How does wild data provably help ood detection? InThe Twelfth International Conference on Learning Representations, 2024
work page 2024
-
[11]
Convex formulation for learning from positive and unlabeled data
Marthinus Du Plessis, Gang Niu, and Masashi Sugiyama. Convex formulation for learning from positive and unlabeled data. InInternational conference on machine learning, pp. 1386–1394. PMLR, 2015. 11
work page 2015
-
[12]
Marthinus C Du Plessis, Gang Niu, and Masashi Sugiyama. Analysis of learning from positive and unlabeled data.Advances in neural information processing systems, 27, 2014
work page 2014
-
[13]
Learning classifiers from only positive and unlabeled data
Charles Elkan and Keith Noto. Learning classifiers from only positive and unlabeled data. InProceedings of the 14th ACM SIGKDD international conference on Knowledge discovery and data mining, pp. 213– 220, 2008
work page 2008
-
[14]
Zero-shot out-of-distribution detection based on the pre-trained model clip
Sepideh Esmaeilpour, Bing Liu, Eric Robertson, and Lei Shu. Zero-shot out-of-distribution detection based on the pre-trained model clip. InProceedings of the AAAI conference on artificial intelligence, volume 36, pp. 6568–6576, 2022
work page 2022
-
[15]
A Baseline for Detecting Misclassified and Out-of-Distribution Examples in Neural Networks
Dan Hendrycks and Kevin Gimpel. A baseline for detecting misclassified and out-of-distribution exam- ples in neural networks.arXiv preprint arXiv:1610.02136, 2016
work page internal anchor Pith review Pith/arXiv arXiv 2016
-
[16]
Deep Anomaly Detection with Outlier Exposure
Dan Hendrycks, Mantas Mazeika, and Thomas Dietterich. Deep anomaly detection with outlier exposure. arXiv preprint arXiv:1812.04606, 2018
work page internal anchor Pith review Pith/arXiv arXiv 2018
-
[17]
Scaling out-of-distribution detection for real-world settings
Dan Hendrycks, Steven Basart, Mantas Mazeika, Andy Zou, Joe Kwon, Mohammadreza Mostajabi, Jacob Steinhardt, and Dawn Song. Scaling out-of-distribution detection for real-world settings.arXiv preprint arXiv:1911.11132, 2019
-
[18]
The many faces of robustness: A critical analysis of out- of-distribution generalization
Dan Hendrycks, Steven Basart, Norman Mu, Saurav Kadavath, Frank Wang, Evan Dorundo, Rahul Desai, Tyler Zhu, Samyak Parajuli, Mike Guo, et al. The many faces of robustness: A critical analysis of out- of-distribution generalization. InProceedings of the IEEE/CVF international conference on computer vision, pp. 8340–8349, 2021
work page 2021
-
[19]
Dan Hendrycks, Kevin Zhao, Steven Basart, Jacob Steinhardt, and Dawn Song. Natural adversarial examples. InProceedings of the IEEE/CVF conference on computer vision and pattern recognition, pp. 15262–15271, 2021
work page 2021
-
[20]
Rui Huang, Andrew Geng, and Yixuan Li. On the importance of gradients for detecting distributional shifts in the wild.Advances in Neural Information Processing Systems, 34:677–689, 2021
work page 2021
-
[21]
Xiaowei Huang, Daniel Kroening, Wenjie Ruan, James Sharp, Youcheng Sun, Emese Thamo, Min Wu, and Xinping Yi. A survey of safety and trustworthiness of deep neural networks: Verification, testing, adversarial attack and defence, and interpretability.Computer Science Review, 37:100270, 2020
work page 2020
-
[22]
Zhizhong Huang, Jie Chen, Junping Zhang, and Hongming Shan. Learning representation for clustering via prototype scattering and positive sampling.IEEE Transactions on Pattern Analysis and Machine Intelligence, 45(6):7509–7524, 2022
work page 2022
-
[23]
Robust estimation of a location parameter
Peter J Huber. Robust estimation of a location parameter. InBreakthroughs in statistics: Methodology and distribution, pp. 492–518. Springer, 1992
work page 1992
-
[24]
Xue Jiang, Feng Liu, Zhen Fang, Hong Chen, Tongliang Liu, Feng Zheng, and Bo Han. Negative label guided ood detection with pretrained vision-language models.arXiv preprint arXiv:2403.20078, 2024
-
[25]
Training ood detectors in their natural habitats
Julian Katz-Samuels, Julia B Nakhleh, Robert Nowak, and Yixuan Li. Training ood detectors in their natural habitats. InInternational Conference on Machine Learning, pp. 10848–10865. PMLR, 2022
work page 2022
-
[26]
Being bayesian, even just a bit, fixes overconfi- dence in relu networks
Agustinus Kristiadi, Matthias Hein, and Philipp Hennig. Being bayesian, even just a bit, fixes overconfi- dence in relu networks. InInternational conference on machine learning, pp. 5436–5446. PMLR, 2020
work page 2020
-
[27]
Training Confidence-calibrated Classifiers for Detecting Out-of-Distribution Samples
Kimin Lee, Honglak Lee, Kibok Lee, and Jinwoo Shin. Training confidence-calibrated classifiers for detecting out-of-distribution samples.arXiv preprint arXiv:1711.09325, 2017
work page internal anchor Pith review Pith/arXiv arXiv 2017
-
[28]
Kimin Lee, Kibok Lee, Honglak Lee, and Jinwoo Shin. A simple unified framework for detecting out- of-distribution samples and adversarial attacks.Advances in neural information processing systems, 31, 2018
work page 2018
-
[29]
Learning transferable negative prompts for out-of-distribution detection
Tianqi Li, Guansong Pang, Xiao Bai, Wenjun Miao, and Jin Zheng. Learning transferable negative prompts for out-of-distribution detection. InProceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 17584–17594, 2024
work page 2024
-
[30]
Enhancing the reliability of out-of-distribution image detection in neural networks
Shiyu Liang, Yixuan Li, and Rayadurgam Srikant. Enhancing the reliability of out-of-distribution image detection in neural networks.arXiv preprint arXiv:1706.02690, 2017
-
[31]
Estimating the partition function by discrim- inance sampling
Qiang Liu, Jian Peng, Alexander Ihler, and John Fisher III. Estimating the partition function by discrim- inance sampling. InProceedings of the Thirty-First Conference on Uncertainty in Artificial Intelligence, pp. 514–522, 2015. 12
work page 2015
-
[32]
Energy-based out-of-distribution detection
Weitang Liu, Xiaoyun Wang, John Owens, and Yixuan Li. Energy-based out-of-distribution detection. Advances in neural information processing systems, 33:21464–21475, 2020
work page 2020
-
[33]
Andrey Malinin and Mark Gales. Predictive uncertainty estimation via prior networks.Advances in neural information processing systems, 31, 2018
work page 2018
-
[34]
Andrey Malinin and Mark Gales. Reverse kl-divergence training of prior networks: Improved uncertainty and adversarial robustness.Advances in Neural Information Processing Systems, 32, 2019
work page 2019
-
[35]
Wordnet: a lexical database for english.Communications of the ACM, 38(11):39–41, 1995
George A Miller. Wordnet: a lexical database for english.Communications of the ACM, 38(11):39–41, 1995
work page 1995
-
[36]
Yifei Ming, Ziyang Cai, Jiuxiang Gu, Yiyou Sun, Wei Li, and Yixuan Li. Delving into out-of-distribution detection with vision-language representations.Advances in neural information processing systems, 35: 35087–35102, 2022
work page 2022
-
[37]
Atsuyuki Miyai, Qing Yu, Go Irie, and Kiyoharu Aizawa. Locoop: Few-shot out-of-distribution detection via prompt learning.Advances in Neural Information Processing Systems, 36, 2024
work page 2024
-
[38]
Provable guarantees for understanding out-of-distribution detection
Peyman Morteza and Yixuan Li. Provable guarantees for understanding out-of-distribution detection. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 36, pp. 7831–7840, 2022
work page 2022
-
[39]
Out of distribution data detection using dropout bayesian neural networks
Andre T Nguyen, Fred Lu, Gary Lopez Munoz, Edward Raff, Charles Nicholas, and James Holt. Out of distribution data detection using dropout bayesian neural networks. InProceedings of the AAAI Confer- ence on Artificial Intelligence, volume 36, pp. 7877–7885, 2022
work page 2022
-
[40]
Deep neural networks are easily fooled: High confidence predictions for unrecognizable images
Anh Nguyen, Jason Yosinski, and Jeff Clune. Deep neural networks are easily fooled: High confidence predictions for unrecognizable images. InProceedings of the IEEE conference on computer vision and pattern recognition, pp. 427–436, 2015
work page 2015
-
[41]
Out-of-distribution detection with negative prompts
Jun Nie, Yonggang Zhang, Zhen Fang, Tongliang Liu, Bo Han, and Xinmei Tian. Out-of-distribution detection with negative prompts. InThe Twelfth International Conference on Learning Representations, 2024
work page 2024
-
[42]
Deep structural contrastive subspace clustering
Bo Peng and Wenjie Zhu. Deep structural contrastive subspace clustering. InAsian Conference on Machine Learning, pp. 1145–1160. PMLR, 2021
work page 2021
-
[43]
Deep residual matrix factorization for gait recognition
Bo Peng, Wenjie Zhu, and Xiuhui Wang. Deep residual matrix factorization for gait recognition. In Proceedings of the 2020 12th International Conference on Machine Learning and Computing, pp. 330– 334, 2020
work page 2020
-
[44]
Knowledge distillation with auxiliary variable
Bo Peng, Zhen Fang, Guangquan Zhang, and Jie Lu. Knowledge distillation with auxiliary variable. In Forty-first International Conference on Machine Learning, 2024
work page 2024
-
[45]
Conjnorm: Tractable density estima- tion for out-of-distribution detection
Bo Peng, Yadan Luo, Yonggang Zhang, Yixuan Li, and Zhen Fang. Conjnorm: Tractable density estima- tion for out-of-distribution detection. InThe Twelfth International Conference on Learning Representa- tions, 2024
work page 2024
-
[46]
Bo Peng, Jie Lu, Guangquan Zhang, and Zhen Fang. An information-theoretical framework for under- standing out-of-distribution detection with pretrained vision-language models. InThe Thirty-ninth Annual Conference on Neural Information Processing Systems, 2025
work page 2025
-
[47]
On the provable importance of gradients for au- tonomous language-assisted image clustering
Bo Peng, Jie Lu, Guangquan Zhang, and Zhen Fang. On the provable importance of gradients for au- tonomous language-assisted image clustering. InProceedings of the IEEE/CVF International Conference on Computer Vision, pp. 19805–19815, 2025
work page 2025
-
[48]
On the Provable Importance of Gradients for Language-Assisted Image Clustering
Bo Peng, Jie Lu, Guangquan Zhang, and Zhen Fang. On the provable importance of gradients for language-assisted image clustering.arXiv preprint arXiv:2510.16335, 2025
work page internal anchor Pith review Pith/arXiv arXiv 2025
-
[49]
Distributional prototype learning for out-of-distribution detection
Bo Peng, Jie Lu, Yonggang Zhang, Guangquan Zhang, and Zhen Fang. Distributional prototype learning for out-of-distribution detection. InProceedings of the 31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining V . 1, pp. 1104–1114, 2025
work page 2025
-
[50]
Learning transferable visual models from natural language supervision
Alec Radford, Jong Wook Kim, Chris Hallacy, Aditya Ramesh, Gabriel Goh, Sandhini Agarwal, Girish Sastry, Amanda Askell, Pamela Mishkin, Jack Clark, et al. Learning transferable visual models from natural language supervision. InInternational conference on machine learning, pp. 8748–8763. PMLR, 2021. 13
work page 2021
-
[51]
Do imagenet classifiers generalize to imagenet? InInternational conference on machine learning, pp
Benjamin Recht, Rebecca Roelofs, Ludwig Schmidt, and Vaishaal Shankar. Do imagenet classifiers generalize to imagenet? InInternational conference on machine learning, pp. 5389–5400. PMLR, 2019
work page 2019
-
[52]
Detecting out-of-distribution examples with gram matri- ces
Chandramouli Shama Sastry and Sageev Oore. Detecting out-of-distribution examples with gram matri- ces. InInternational Conference on Machine Learning, pp. 8491–8501. PMLR, 2020
work page 2020
-
[53]
Out-of-distribution detection with deep nearest neighbors
Yiyou Sun, Yifei Ming, Xiaojin Zhu, and Yixuan Li. Out-of-distribution detection with deep nearest neighbors. InInternational Conference on Machine Learning, pp. 20827–20840. PMLR, 2022
work page 2022
-
[54]
Non-parametric outlier synthesis.arXiv preprint arXiv:2303.02966, 2023
Leitian Tao, Xuefeng Du, Xiaojin Zhu, and Yixuan Li. Non-parametric outlier synthesis.arXiv preprint arXiv:2303.02966, 2023
-
[55]
The inaturalist species classification and detection dataset
Grant Van Horn, Oisin Mac Aodha, Yang Song, Yin Cui, Chen Sun, Alex Shepard, Hartwig Adam, Pietro Perona, and Serge Belongie. The inaturalist species classification and detection dataset. InProceedings of the IEEE conference on computer vision and pattern recognition, pp. 8769–8778, 2018
work page 2018
-
[56]
Vim: Out-of-distribution with virtual-logit matching
Haoqi Wang, Zhizhong Li, Litong Feng, and Wayne Zhang. Vim: Out-of-distribution with virtual-logit matching. InProceedings of the IEEE/CVF conference on computer vision and pattern recognition, pp. 4921–4930, 2022
work page 2022
-
[57]
Haoran Wang, Weitang Liu, Alex Bocchieri, and Yixuan Li. Can multi-label classification networks know what they don’t know?Advances in Neural Information Processing Systems, 34:29074–29087, 2021
work page 2021
-
[58]
Clipn for zero-shot ood detection: Teaching clip to say no
Hualiang Wang, Yi Li, Huifeng Yao, and Xiaomeng Li. Clipn for zero-shot ood detection: Teaching clip to say no. InProceedings of the IEEE/CVF International Conference on Computer Vision, pp. 1802–1812, 2023
work page 2023
-
[59]
Sun database: Large- scale scene recognition from abbey to zoo
Jianxiong Xiao, James Hays, Krista A Ehinger, Aude Oliva, and Antonio Torralba. Sun database: Large- scale scene recognition from abbey to zoo. In2010 IEEE computer society conference on computer vision and pattern recognition, pp. 3485–3492. IEEE, 2010
work page 2010
-
[60]
Generalized out-of-distribution detection: A survey.arXiv preprint arXiv:2110.11334, 2021
Jingkang Yang, Kaiyang Zhou, Yixuan Li, and Ziwei Liu. Generalized out-of-distribution detection: A survey.arXiv preprint arXiv:2110.11334, 2021
-
[61]
Yabin Zhang and Lei Zhang. Adaneg: Adaptive negative proxy guided ood detection with vision-language models.Advances in Neural Information Processing Systems, 37:38744–38768, 2024
work page 2024
-
[62]
Lapt: Label-driven automated prompt tuning for ood detection with vision-language models
Yabin Zhang, Wenjie Zhu, Chenhang He, and Lei Zhang. Lapt: Label-driven automated prompt tuning for ood detection with vision-language models. InEuropean Conference on Computer Vision, pp. 271–288. Springer, 2025
work page 2025
-
[63]
Yonggang Zhang, Jie Lu, Bo Peng, Zhen Fang, and Yiu-ming Cheung. Learning to shape in-distribution feature space for out-of-distribution detection.Advances in Neural Information Processing Systems, 37: 49384–49402, 2024
work page 2024
-
[64]
Decoupling maxlogit for out-of-distribution detection
Zihan Zhang and Xiang Xiang. Decoupling maxlogit for out-of-distribution detection. InProceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 3388–3397, 2023
work page 2023
-
[65]
Bolei Zhou, Agata Lapedriza, Aditya Khosla, Aude Oliva, and Antonio Torralba. Places: A 10 million image database for scene recognition.IEEE transactions on pattern analysis and machine intelligence, 40(6):1452–1464, 2017
work page 2017
-
[66]
Qinli Zhou, Wenjie Zhu, Hao Chen, and Bo Peng. Community detection in multiplex networks by deep structure-preserving non-negative matrix factorization.Applied Intelligence, 55(1):26, 2025
work page 2025
-
[67]
Sparse and low-rank regularized deep subspace clustering.Knowledge-Based Systems, 204:106199, 2020
Wenjie Zhu and Bo Peng. Sparse and low-rank regularized deep subspace clustering.Knowledge-Based Systems, 204:106199, 2020
work page 2020
-
[68]
Wenjie Zhu and Bo Peng. Manifold-based aggregation clustering for unsupervised vehicle re- identification.Knowledge-Based Systems, 235:107624, 2022
work page 2022
-
[69]
Wenjie Zhu, Bo Peng, Han Wu, and Binhao Wang. Query set centered sparse projection learning for set based image classification.Applied Intelligence, 50(10):3400–3411, 2020
work page 2020
-
[70]
Self-supervised embedding for subspace clustering
Wenjie Zhu, Bo Peng, and Chunchun Chen. Self-supervised embedding for subspace clustering. In Proceedings of the 30th ACM International Conference on Information & Knowledge Management, pp. 3687–3691, 2021
work page 2021
-
[71]
Wenjie Zhu, Chunchun Chen, and Bo Peng. Unified robust network embedding framework for community detection via extreme adversarial attacks.Information Sciences, 643:119200, 2023. 14
work page 2023
-
[72]
Wenjie Zhu, Bo Peng, Chunchun Chen, and Hao Chen. Deep discriminative dictionary pair learning for image classification.Applied Intelligence, 53(19):22017–22030, 2023
work page 2023
-
[73]
Wenjie Zhu, Bo Peng, and Wei Qi Yan. Dual knowledge distillation on multiview pseudo labels for unsupervised person re-identification.IEEE Transactions on Multimedia, 26:7359–7371, 2024
work page 2024
-
[74]
Wenjie Zhu, Bo Peng, and Wei Qi Yan. Deep inductive and scalable subspace clustering via nonlocal contrastive self-distillation.IEEE Transactions on Circuits and Systems for Video Technology, 2025
work page 2025
-
[75]
David Zimmerer, Peter M Full, Fabian Isensee, Paul J ¨ager, Tim Adler, Jens Petersen, Gregor K ¨ohler, Tobias Ross, Annika Reinke, Antanas Kascenas, et al. Mood 2020: A public benchmark for out-of- distribution detection and localization on medical images.IEEE Transactions on Medical Imaging, 41 (10):2728–2738, 2022. A Derivation of Theorem 1 We plug in t...
work page 2020
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