Timezone: »
Many problems in science and engineering involve optimizing an expensive black-box function over a high-dimensional space. For such black-box optimization (BBO) problems, we typically assume a small budget for online function evaluations, but also often have access to a fixed, offline dataset for pretraining. Prior approaches seek to utilize the offline data to approximate the function or its inverse but are not sufficiently accurate far from the data distribution. We propose BONET, a generative framework for pretraining a novel black-box optimizer using offline datasets. In BONET, we train an autoregressive model on fixed-length trajectories derived from an offline dataset. We design a sampling strategy to synthesize trajectories from offline data using a simple heuristic of rolling out monotonic transitions from low-fidelity to high-fidelity samples. Empirically, we instantiate BONET using a causally masked transformer and evaluate it on Design-Bench, where we rank the best on average, outperforming state-of-the-art baselines
Author Information
Siddarth Krishnamoorthy (UCLA)
Satvik Mashkaria (University of California, Los Angeles)
Aditya Grover (University of California, Los Angeles)
More from the Same Authors
-
2022 : Conditioned Spatial Downscaling of Climate Variables »
Alex Hung · Evan Becker · Ted Zadouri · Aditya Grover -
2022 : Short-range forecasts of global precipitation using deep learning-augmented numerical weather prediction »
Manmeet Singh · Vaisakh SB · Nachiketa Acharya · Aditya Grover · Suryachandra A. Rao · Bipin Kumar · Zong-Liang Yang · Dev Niyogi -
2022 : Machine Learning for Predicting Climate Extremes »
Hritik Bansal · Shashank Goel · Tung Nguyen · Aditya Grover -
2022 : Pareto-Efficient Decision Agents for Offline Multi-Objective Reinforcement Learning »
Baiting Zhu · Meihua Dang · Aditya Grover -
2022 : ConserWeightive Behavioral Cloning for Reliable Offline Reinforcement Learning »
Tung Nguyen · Qinqing Zheng · Aditya Grover -
2022 : Pareto-Efficient Decision Agents for Offline Multi-Objective Reinforcement Learning »
Baiting Zhu · Meihua Dang · Aditya Grover -
2023 Poster: Decision Stacks: Flexible Reinforcement Learning via Modular Generative Models »
Siyan Zhao · Aditya Grover -
2023 Poster: Synthetic Pretraining for Few-shot Black-Box Optimization »
Tung Nguyen · Sudhanshu Agrawal · Aditya Grover -
2023 Poster: ClimateLearn: Benchmarking Machine Learning for Weather and Climate Modeling »
Tung Nguyen · Jason Jewik · Hritik Bansal · Prakhar Sharma · Aditya Grover -
2022 : Machine Learning for Predicting Climate Extremes »
Hritik Bansal · Shashank Goel · Tung Nguyen · Aditya Grover -
2022 Poster: Masked Autoencoding for Scalable and Generalizable Decision Making »
Fangchen Liu · Hao Liu · Aditya Grover · Pieter Abbeel -
2022 Poster: CyCLIP: Cyclic Contrastive Language-Image Pretraining »
Shashank Goel · Hritik Bansal · Sumit Bhatia · Ryan Rossi · Vishwa Vinay · Aditya Grover