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首页> 外文期刊>Nutrients >StandFood: Standardization of Foods Using a Semi-Automatic System for Classifying and Describing Foods According to FoodEx2
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StandFood: Standardization of Foods Using a Semi-Automatic System for Classifying and Describing Foods According to FoodEx2

机译:StandFood:使用根据FoodEx2对食物进行分类和描述的半自动系统对食物进行标准化

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摘要

The European Food Safety Authority has developed a standardized food classification and description system called FoodEx2. It uses facets to describe food properties and aspects from various perspectives, making it easier to compare food consumption data from different sources and perform more detailed data analyses. However, both food composition data and food consumption data, which need to be linked, are lacking in FoodEx2 because the process of classification and description has to be manually performed—a process that is laborious and requires good knowledge of the system and also good knowledge of food (composition, processing, marketing, etc.). In this paper, we introduce a semi-automatic system for classifying and describing foods according to FoodEx2, which consists of three parts. The first involves a machine learning approach and classifies foods into four FoodEx2 categories, with two for single foods: raw (r) and derivatives (d), and two for composite foods: simple (s) and aggregated (c). The second uses a natural language processing approach and probability theory to describe foods. The third combines the result from the first and the second part by defining post-processing rules in order to improve the result for the classification part. We tested the system using a set of food items (from Slovenia) manually-coded according to FoodEx2. The new semi-automatic system obtained an accuracy of 89% for the classification part and 79% for the description part, or an overall result of 79% for the whole system.
机译:欧洲食品安全局已开发出称为FoodEx2的标准化食品分类和描述系统。它使用各个方面从各个角度描述食品特性和方面,从而使比较来自不同来源的食品消费数据和执行更详细的数据分析变得更加容易。但是,由于必须手动执行分类和描述的过程,因此在FoodEx2中缺少需要链接的食物成分数据和食物消费数据,这既费力又需要系统知识和知识食品(成分,加工,销售等)。在本文中,我们介绍了一个根据FoodEx2对食物进行分类和描述的半自动系统,该系统包括三个部分。第一种涉及机器学习方法,将食物分为四个FoodEx2类,其中两种针对单一食物:生食(r)和衍生物(d),两种针对复合食物:简单食品(s)和聚合食品(c)。第二种使用自然语言处理方法和概率论来描述食物。第三部分通过定义后处理规则来合并第一部分和第二部分的结果,以改善分类部分的结果。我们使用了一组根据FoodEx2手动编码的食品(来自斯洛文尼亚)对系统进行了测试。新的半自动系统的分类部分的准确性为89%,描述部分的准确性为79%,整个系统的总体结果为79%。

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