Abstract and 1. Introduction
Background & Related Work
Method
3.1 Sampling Small Mutations
3.2 Policy
3.3 Value Network & Search
3.4 Architecture
Experiments
4.1 Environments
4.2 Baselines
4.3 Ablations
Conclusion, Acknowledgments and Disclosure of Funding, and References
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Appendix
A. Mutation Algorithm
B. Context-Free Grammars
C. Sketch Simulation
D. Complexity Filtering
E. Tree Path Algorithm
F. Implementation Details
The main idea behind our method is to develop a form of denoising diffusion models analogous to image diffusion models for syntax trees.
\ Consider the example task from Ellis et al. [11] of generating a constructive solid geometry (CSG2D) program from an image. In CSG2D, we can combine simple primitives like circles and quadrilaterals using boolean operations like addition and subtraction to create more complex shapes, with the context-free grammar (CFG),
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\ In the following sections, we will first describe how “noise” is added to syntax trees. Then, we will detail how we train a neural network to reverse this noise. Finally, we will describe how we use this neural network for search.
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:::info Authors:
(1) Shreyas Kapur, University of California, Berkeley (srkp@cs.berkeley.edu);
(2) Erik Jenner, University of California, Berkeley (jenner@cs.berkeley.edu);
(3) Stuart Russell, University of California, Berkeley (russell@cs.berkeley.edu).
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:::info This paper is available on arxiv under CC BY-SA 4.0 DEED license.
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