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Suggesting Cooking Recipes Through Simulation and Bayesian Optimization

机译:通过仿真和贝叶斯优化建议烹饪食谱

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Cooking typically involves a plethora of decisions about ingredients and tools that need to be chosen in order to write a good cooking recipe. Cooking can be modelled in an optimization framework, as it involves a search space of ingredients, kitchen tools, cooking times or temperatures. If we model as an objective function the quality of the recipe, several problems arise. No analytical expression can model all the recipes, so no gradients are available. The objective function is subjective, in other words, it contains noise. Moreover, evaluations are expensive both in time and human resources. Bayesian Optimization (BO) emerges as an ideal methodology to tackle problems with these characteristics. In this paper, we propose a methodology to suggest recipe recommendations based on a Machine Learning (ML) model that fits real and simulated data and BO. We provide empirical evidence with two experiments that support the adequacy of the methodology.
机译:烹饪通常需要做出很多决定,以决定编写好的烹饪食谱所需的成分和工具。可以在优化框架中对烹饪进行建模,因为它涉及原料,厨房工具,烹饪时间或温度的搜索空间。如果我们将配方质量作为目标函数建模,则会出现一些问题。没有任何解析表达式可以对所有配方进行建模,因此没有可用的梯度。目标函数是主观​​的,换言之,它包含噪声。而且,评估在时间和人力资源上都是昂贵的。贝叶斯优化(BO)成为解决这些特征问题的理想方法。在本文中,我们提出了一种基于机器学习(ML)模型的配方建议方法,该模型适合真实和模拟数据以及BO。我们通过两个实验来提供经验证据,以支持该方法的适当性。

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