: This paper focuses on nutritional recommendation systems (RS), i.e. AI-powered automatic systems providing users with suggestions about what to eat to pursue their weight/body shape goals. A trade-off among (potentially) conflictual requirements must be taken into account when designing these kinds of systems, there including: (i) adherence to experts' prescriptions, (ii) adherence to users' tastes and preferences, (iii) explainability of the whole recommendation process. Accordingly, in this paper we propose a novel approach to the engineering of nutritional RS, combining machine learning and symbolic knowledge extraction to profile users-hence harmonising the aforementioned requirements. MethodsOur contribution focuses on the data proce...
Users of food recommender systems typically prefer popular recipes, which tend to be unhealthy. To e...
Healthy nutrition contributes to preventing non-communicable and diet-related diseases. Recommender ...
Food recommender systems typically rely on popularity, as well as similarity between recipes to gene...
: This paper focuses on nutritional recommendation systems (RS), i.e. AI-powered automatic systems p...
AI-based software applications for personalized nutrition have recently gained increasing attention ...
In this paper, some new components that have been integrated in the Diet4You system for the generati...
Users of food recommender systems typically prefer popular recipes, which tend to be unhealthy. To e...
Introduction: Nowadays the food types became so diverse and complicated, so human needs+ professiona...
Food recommenders have been touted as a useful tool to help people achieve a healthy diet. Here we i...
AbstractPeople depend on popular search engines, like Google and Yahoo, to retrieve the desired info...
In knowledge intensive nutrition-related contexts, such as personalised dietary, diet-sensitive dise...
Many methods have been proposed to generate meal plans, but most of them only consider proximates. H...
Advances in Big Data analytics and machine learning have offered intangible benefits across many are...
A recommendation system assists users in finding items that are relevant to them. Existing recommend...
Recommender systems (RSs) are systems that produce individualized recommendations as output or driv...
Users of food recommender systems typically prefer popular recipes, which tend to be unhealthy. To e...
Healthy nutrition contributes to preventing non-communicable and diet-related diseases. Recommender ...
Food recommender systems typically rely on popularity, as well as similarity between recipes to gene...
: This paper focuses on nutritional recommendation systems (RS), i.e. AI-powered automatic systems p...
AI-based software applications for personalized nutrition have recently gained increasing attention ...
In this paper, some new components that have been integrated in the Diet4You system for the generati...
Users of food recommender systems typically prefer popular recipes, which tend to be unhealthy. To e...
Introduction: Nowadays the food types became so diverse and complicated, so human needs+ professiona...
Food recommenders have been touted as a useful tool to help people achieve a healthy diet. Here we i...
AbstractPeople depend on popular search engines, like Google and Yahoo, to retrieve the desired info...
In knowledge intensive nutrition-related contexts, such as personalised dietary, diet-sensitive dise...
Many methods have been proposed to generate meal plans, but most of them only consider proximates. H...
Advances in Big Data analytics and machine learning have offered intangible benefits across many are...
A recommendation system assists users in finding items that are relevant to them. Existing recommend...
Recommender systems (RSs) are systems that produce individualized recommendations as output or driv...
Users of food recommender systems typically prefer popular recipes, which tend to be unhealthy. To e...
Healthy nutrition contributes to preventing non-communicable and diet-related diseases. Recommender ...
Food recommender systems typically rely on popularity, as well as similarity between recipes to gene...