配料匹配,以确定互联网来源食谱的营养特性

Manuel Müller, Morgan Harvey, David Elsweiler, Stefanie Mika
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引用次数: 19

摘要

要在智能营养辅助或推荐系统中利用互联网上庞大的食谱数据库,重要的是要有准确的食谱营养数据。不幸的是,大多数在线食谱没有这样的数据,或者数据质量可疑。在本文中,我们提出了一个系统,可以自动计算来自互联网的食谱的营养价值。这是一个具有挑战性的问题,有几个原因,包括成分描述缺乏公式化结构,成分同义词,品牌名称,以及分配的数量不明确。我们提出了一个系统,该系统利用成分描述的语言属性和建模为规则的营养知识来估计食谱的营养成分。我们在一个大型互联网食谱数据库(23.5k个食谱)上评估了该系统,并根据识别成分的能力和人类专家确定的营养价值的错误来检查其性能。我们的研究结果表明,我们的系统可以匹配集合中91%的食谱的所有成分,并在10%的误差范围内产生营养价值,从人类评估热量,蛋白质和碳水化合物的价值。我们表明,误差小于多个人类评估者之间的误差,也小于估计营养摄入量的不同标准措施所报告的误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ingredient matching to determine the nutritional properties of Internet-sourced recipes
To utilise the vast recipe databases on the Internet in intelligent nutritional assistance or recommender systems, it is important to have accurate nutritional data for recipes. Unfortunately, most online recipes have no such data available or have data of suspect quality. In this paper we present a system that automatically calculates the nutritional value of recipes sourced from the Internet. This is a challenging problem for several reasons, including lack of formulaic structure in ingredient descriptions, ingredient synonymy, brand names, and unspecific quantities being assigned. We present a system that exploits linguistic properties of ingredient descriptions and nutritional knowledge modelled as rules to estimate the nutritional content of recipes. We evaluate the system on a large Internet sourced recipe database (23.5k recipes) and examine performance in terms of ability to recognise ingredients and error in nutritional values against values established by human experts. Our results show that our system can match all of the ingredients for 91% of recipes in the collection and generate nutritional values within a 10% error bound from human assessors for calorie, protein and carbohydrate values. We show that the error is less than that between multiple human assessors and also less than the error reported for different standard measures of estimating nutritional intake.
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