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Farzan Farnia

33 papers · 2015–2026 · 8 conferences · across top CS/AI conferences

Achievements

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+11 more ↓ 🐝 Cross-Pollinator (10) πŸƒ Academic Marathon (10) πŸŒ‰ Interdisciplinary Bridge 🌍 Conference Polyglot (7) 🌈 Renaissance Researcher (5)
🌈 Renaissance Researcher (5) πŸ—ΊοΈ Taxonomy Completionist (38) 🧭 Keyword Pioneer πŸ† Grand Slam πŸ‘‘ Triple Crown πŸ† Keyword Champion (2) ❓ The Questioner (2) πŸ—ƒοΈ Keyword Collector (79) πŸ”₯ Unstoppable (8) ⚑ Prolific Year (7) πŸ’Ž Century Club (32)

Conferences

ICML (11) NIPS (6) AISTATS (4) ICLR (4) UAI (3) CVPR (2) ICCV (2) AAAI (1)

Papers

Boosting Cross-problem Generalization in Diffusion-Based Neural Combinatorial Solver via Inference Time Adaptation AAAI 2026 Be More Diverse than the Most Diverse: Optimal Mixtures of Generative Models via Mixture-UCB Bandit Algorithms ICLR 2025 A Multi-Armed Bandit Approach to Online Selection and Evaluation of Generative Models AISTATS 2025 Gaussian Smoothing in Saliency Maps: The Stability-Fidelity Trade-Off in Neural Network Interpretability AISTATS 2025 Unveiling Differences in Generative Models: A Scalable Differential Clustering Approach CVPR 2025 Scendi Score: Prompt-Aware Diversity Evaluation via Schur Complement of CLIP Embeddings ICCV 2025 Boosting the visual interpretability of CLIP via adversarial fine-tuning ICLR 2025 Kernel-based Unsupervised Embedding Alignment for Enhanced Visual Representation in Vision-language Models ICML 2025 PAK-UCB Contextual Bandit: An Online Learning Approach to Prompt-Aware Selection of Generative Models and LLMs ICML 2025 Towards an Explainable Comparison and Alignment of Feature Embeddings ICML 2025 Multilayer Matrix Factorization via Dimension-Reducing Diffusion Variational Inference ICML 2025 Certifiably Robust Model Evaluation in Federated Learning under Meta-Distributional Shifts ICML 2025 Do Vendi Scores Converge with Finite Samples? Truncated Vendi Score for Finite-Sample Convergence Guarantees UAI 2025 Towards a Scalable Reference-Free Evaluation of Generative Models NIPS 2024 An Interpretable Evaluation of Entropy-based Novelty of Generative Models ICML 2024 Structured Gradient-based Interpretations via Norm-Regularized Adversarial Training CVPR 2024 On the Inductive Biases of Demographic Parity-based Fair Learning Algorithms UAI 2024 An Information Theoretic Approach to Interaction-Grounded Learning ICML 2024 Provably Efficient CVaR RL in Low-rank MDPs ICLR 2024 On Convergence in Wasserstein Distance and f-divergence Minimization Problems AISTATS 2024 Mode-Seeking Divergences: Theory and Applications to GANs AISTATS 2023 On the Role of Generalization in Transferability of Adversarial Examples UAI 2023 MoreauGrad: Sparse and Robust Interpretation of Neural Networks via Moreau Envelope ICCV 2023 An Information-Theoretic Evaluation of Generative Models in Learning Multi-modal Distributions NIPS 2023 On Convergence of Gradient Descent Ascent: A Tight Local Analysis ICML 2022 A Wasserstein Minimax Framework for Mixed Linear Regression ICML 2021 Train simultaneously, generalize better: Stability of gradient-based minimax learners ICML 2021 Robust Federated Learning: The Case of Affine Distribution Shifts NIPS 2020 Do GANs always have Nash equilibria? ICML 2020 Generalizable Adversarial Training via Spectral Normalization ICLR 2019 A Convex Duality Framework for GANs NIPS 2018 A Minimax Approach to Supervised Learning NIPS 2016 Discrete RΓ©nyi Classifiers NIPS 2015