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Application of Intelligent Recommendation Techniques for Consumers Food Choices in Restaurants

机译:智能推荐技术在饭店消费者食品选择中的应用

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摘要

Currently, there has been a new trend in applying modern robotics, information technology, and artificial intelligence to restaurants for improvements of food service, cost-effectiveness, and customer satisfaction. As robots replace humans to serve food, there is a clear need for robotic servers to help consumers select foods from a menu that satisfies their preferences such as taste and nutrition. However, currently, little is known about how eating behaviors drive food choices, and it is often difficult for consumers to make choices from a variety of foods offered by the typical restaurant, even with the assistance from a human server. In this paper, we conduct an exploratory study on an intelligent food choice method that recommends dishes by predicting individual's dietary preference, including ingredients, types of spices, price, etc. A multi-attribute relation matrix tri-factorization (MARMTF) technique is developed for a relation-driven food recommendation system. First, the user's ordering history and their rating scores of the foods in the menu are gathered and represented by a user-dish rating matrix. Next, the attribute relations of the ingredients, spicy level, and price of each food choice are extracted to construct a group of the relation matrices. Then, these matrices are integrated into a large block matrix. In the next step, a matrix tri-factorization algorithm is employed to decompose the block matrix and fuse the complex relationships into matrix factors. Further, a set of approximation block matrices are constructed and the predicted food rating matrix is generated. Finally, the foods (dishes) with sufficiently high preference scores are recommended to the consumers. Our experiments demonstrate that the MARMTF technique can provide effective dish recommendation for customers. Our system significantly simplifies the daunting task of making food choices and has a great potential in providing intelligent and professionally trained non-human waiters and waitresses for employment by future restaurants.
机译:当前,将现代机器人技术,信息技术和人工智能应用于餐厅以改善食品服务,成本效益和客户满意度的趋势已经出现了新趋势。随着机器人代替人类来提供食物,显然需要机器人服务器来帮助消费者从菜单中选择满足其喜好(例如口味和营养)的食物。但是,目前,人们对饮食行为如何影响食物选择知之甚少,而且即使在人工服务员的协助下,消费者通常也很难从典型餐厅提供的各种食物中做出选择。在本文中,我们对一种智能食物选择方法进行了探索性研究,该方法通过预测个人的饮食偏好(包括配料,调味品的种类,价格等)来推荐菜肴。研制了一种多属性关系矩阵三因子分析(MARMTF)技术关系驱动的食品推荐系统。首先,收集用户在菜单中的点餐历史及其对食物的评分,并由用户-菜品评分矩阵表示。接下来,提取每种食物选择的成分,辛辣程度和价格的属性关系,以构建一组关系矩阵。然后,将这些矩阵集成到大块矩阵中。下一步,采用矩阵三因子分解算法分解块矩阵,并将复杂的关系融合为矩阵因子。此外,构造了一组近似块矩阵,并生成了预测食品等级矩阵。最后,向消费者推荐具有足够高的偏爱评分的食物(菜肴)。我们的实验表明,MARMTF技术可以为客户提供有效的菜肴推荐。我们的系统极大地简化了选择食物的艰巨任务,并且在为以后的餐厅提供聪明且经过专业培训的非人类服务员和女服务员方面具有巨大的潜力。

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