๐ฐ Must-read papers on Offline Model-based Optimization ๐ฅ
- ๐ What is Offline Model-based Optimization?
- ๐ Benchmarks
- ๐ฏ Surrogate Models-based Methods
- ๐ค Generative Models-based Methods
- ๐ Other Applications
- ๐ค Contribution
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Design-Bench: Benchmarks for Data-Driven Offline Model-Based Optimization ICML 2022 Jul
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BayesO Benchmarks: Benchmark Functions for Bayesian Optimization Zenodo 2023 Jan
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Offline Model-Based Optimization via Normalized Maximum Likelihood Estimation ICLR 2021 Feb
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Conservative Objective Models for Effective Offline Model-Based Optimization ICML 2021 Jul
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RoMA: Robust Model Adaptation for Offline Model-based Optimization NeurIPS 2021 Oct
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Bidirectional Learning for Offline Infinite-width Model-based Optimization NeurIPS 2022 Sep
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Data-Driven Offline Decision-Making via Invariant Representation Learning NeurIPS 2022 Nov
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Conflict-Averse Gradient Optimization of Ensembles for Effective Offline Model-Based Optimization Arxiv 2023 Mar
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Degradation-Resistant Offline Optimization via Accumulative Risk Control ECAI 2023 Apr
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Importance-aware Co-teaching for Offline Model-based Optimization NeurIPS 2023 Sep
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Parallel-mentoring for Offline Model-based Optimization NeurIPS 2023 Sep
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SENSITIVITY-INFORMED REGULARIZATION FOR OFFLINE BLACK-BOX OPTIMIZATION Openreview 2023 Sep
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ROMO: Retrieval-enhanced Offline Model-based Optimization DAI 2023 Dec
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Learning Surrogates for Offline Black-Box Optimization via Gradient Matching ICML 2024 May
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Conditioning by adaptive sampling for robust design ICML 2019 Jul
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Model Inversion Networks for Model-Based Optimization NeurIPS 2019 Dec
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Autofocused oracles for model-based design NeurIPS 2020 Jun
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Generative Pretraining for Black-Box Optimization ICML 2022 Jun
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Conservative objective models are a special kind of contrastive divergence-based energy model Arxiv 2023 Apr
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Diffusion Models for Black-Box Optimization ICML 2023 Jun
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From Function to Distribution Modeling: A PAC-Generative Approach to Offline Optimization Arxiv 2024 Jan
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Generative Adversarial Bayesian Optimization for Surrogate Objectives Arxiv 2024 Feb
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Diffusion Models as Constrained Samplers for Optimization with Unknown Constraints Arxiv 2024 Feb
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Diffusion Model for Data-Driven Black-Box Optimization Arxiv 2024 Mar
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Offline Model-Based Optimization via Policy-Guided Gradient Search AAAI 2024 May
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Design Editing for Offline Model-based Optimization Arxiv 2024 May
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Bidirectional Learning for Offline Model-based Biological Sequence Design ICML 2023 Jan
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Importance Weighted Expectation-Maximization for Protein Sequence Design ICML 2023 Apr
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Plug & play directed evolution of proteins with gradient-based discrete MCMC IOP Science 2023 Apr
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Conservative objective models for biological sequence design Technical Report 2023 May
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Bootstrapped Training of Score-Conditioned Generator for Offline Design of Biological Sequences NeurIPS 2023 Jun
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High-Dimensional Dueling Optimization with Preference AAAI 2023 Jun
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Improving protein optimization with smoothed fitness landscapes ICLR 2024 Jan
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Fine-Tuning of Continuous-Time Diffusion Models as Entropy-Regularized Control Arxiv 2024 Feb
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Dual-Space Optimization: Improved Molecule Sequence Design by Latent Prompt Transformer Arxiv 2024 Feb
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Antibody Design with Constrained Bayesian Optimization ICLR GEM Workshop 2024 Mar
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Designing Biological Sequences without Prior Knowledge Using Evolutionary Reinforcement Learning AAAI 2024 Mar
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Latent-based Directed Evolution accelerated by Gradient Ascent for Protein Sequence Design BioArxiv 2024 Apr
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Biological Sequence Design with GFlowNets ICML 2022 Mar
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Learning GFlowNets from partial episodes for improved convergence and stability ICML 2022 Sep
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Consistent Training via Energy-Based GFlowNets for Modeling Discrete Joint Distributions Arxiv 2022 Nov
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Stochastic Generative Flow Networks UAI 2023 Feb
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Learning to Scale Logits for Temperature-Conditional GFlowNets NeurIPS AI4Science Workshop 2023 Oct
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Generative Flow Networks Assisted Biological Sequence Editing NeurIPS GenBio Workshop 2023 Oct
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Learning Energy Decompositions for Partial Inference in GFlowNets ICLR 2024 Jan
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Dynamic Backtracking in GFlowNets: Enhancing Decision Steps with Reward-Dependent Adjustment Mechanisms Arxiv 2024 Apr
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Evoopt: an msa-guided, fully unsupervised sequence optimization pipeline for protein design NeurIPS ML4Structural Bio Workshop 2022 Dec
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ExPT: Synthetic Pretraining for Few-Shot Experimental Design NeurIPS 2023 Oct
- Beyond the training set: an intuitive method for detecting distribution shift in model-based optimization Arxiv 2023 Nov
- Feedback Efficient Online Fine-Tuning of Diffusion Models Arxiv 2024 Feb
- OmniPred: Language Models as Universal Regressors Arxiv 2024 Feb
- Deep Active Learning for Scientific Computing in the Wild Arxiv 2023 Jan
- Exploring validation metrics for offline model-based optimisation with diffusion models Arxiv 2022 Nov
- A Data Stream Ensemble Assisted Multifactorial Evolutionary Algorithm for Offline Data-Driven Dynamic Optimization Evolutionary Computation 2023 Dec
- Enhancing DNN Models for EEG/ECoG BCI With a Novel Data-Driven Offline Optimization Method IEEE Access 2023 Apr
- Virtual laboratories: Transforming research with ai Techrxiv 2023 Jan
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Learning to Optimize: Applications in Physical Designs and Manufacturing UNIVERSITY OF MICHIGAN LIBRARY 2022 Jan
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Offline Data-Driven Optimization: Benchmarks, Algorithms and Applications University of California, BerkeleyโProQuest Dissertations & Theses 2023 Jan
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Deep Learning for the modeling and design of artificial electromagnetic materials Duke UniversityโProQuest Dissertations & Theses 2023 Jan
- A cGAN Ensemble-based Uncertainty-aware Surrogate Model for Offline Model-based Optimization in Industrial Control Problems IJCNN 2022 May
Ye Yuan
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