TL;DR
AutoOpt introduces a large dataset of optimization models and a unified machine learning framework that automates solving complex optimization problems directly from images, reducing human effort and improving efficiency.
Contribution
The paper presents AutoOpt, a novel dataset and a comprehensive automated framework for solving optimization problems from images using deep learning and hybrid algorithms.
Findings
Deep learning model outperforms ChatGPT, Gemini, Nougat in MER task.
AutoOpt's BOBD method outperforms traditional algorithms on complex problems.
AutoOpt enables end-to-end automation of optimization problem solving from images.
Abstract
This study presents AutoOpt-11k, a unique image dataset of over 11,000 handwritten and printed mathematical optimization models corresponding to single-objective, multi-objective, multi-level, and stochastic optimization problems exhibiting various types of complexities such as non-linearity, non-convexity, non-differentiability, discontinuity, and high-dimensionality. The labels consist of the LaTeX representation for all the images and modeling language representation for a subset of images. The dataset is created by 25 experts following ethical data creation guidelines and verified in two-phases to avoid errors. Further, we develop AutoOpt framework, a machine learning based automated approach for solving optimization problems, where the user just needs to provide an image of the formulation and AutoOpt solves it efficiently without any further human intervention. AutoOpt framework…
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