Javascript must be enabled to continue!
Recommender System for E-Health
View through CrossRef
Introduction; E-healthcare management services can be significantly enhanced through the implementation of recommender systems, as highlighted in various research papers. These systems, such as Healthcare Recommender Systems (HRS) and Health Care Recommender Systems (HCRS), utilize advanced algorithms and machine learning techniques to provide personalized health recommendations based on user input and medical data. Objective; Recommend healthcare services based on patient's state. Model healthcare information network for efficient service recommendation.Methodology; Recommends healthcare services based on patient's critical situation and requirements. Offers re-configurable healthcare workflows to medical staff. Machine learning method classification is applied using decision tree and its result is presented which reflects 70 to 75% accuracy in predictive models which ensure that health recommender system is a full proof system.Result; Hospital recommender systems represent a significant advancement in healthcare, providing personalized and data-driven recommendations to patients.Conclusion; The integration of recommender systems in e-healthcare management services holds great potential in improving personalized patient care, promoting health awareness, and optimizing the quality of healthcare recommendations. In this paper author analyzed and estimated the level of accuracy of recommendation systems in healthcare for personalized medical treatment. It surveys current applications, challenges, and future directions in this field.
Title: Recommender System for E-Health
Description:
Introduction; E-healthcare management services can be significantly enhanced through the implementation of recommender systems, as highlighted in various research papers.
These systems, such as Healthcare Recommender Systems (HRS) and Health Care Recommender Systems (HCRS), utilize advanced algorithms and machine learning techniques to provide personalized health recommendations based on user input and medical data.
Objective; Recommend healthcare services based on patient's state.
Model healthcare information network for efficient service recommendation.
Methodology; Recommends healthcare services based on patient's critical situation and requirements.
Offers re-configurable healthcare workflows to medical staff.
Machine learning method classification is applied using decision tree and its result is presented which reflects 70 to 75% accuracy in predictive models which ensure that health recommender system is a full proof system.
Result; Hospital recommender systems represent a significant advancement in healthcare, providing personalized and data-driven recommendations to patients.
Conclusion; The integration of recommender systems in e-healthcare management services holds great potential in improving personalized patient care, promoting health awareness, and optimizing the quality of healthcare recommendations.
In this paper author analyzed and estimated the level of accuracy of recommendation systems in healthcare for personalized medical treatment.
It surveys current applications, challenges, and future directions in this field.
Related Results
Privacy Risk in Recommender Systems
Privacy Risk in Recommender Systems
Nowadays, recommender systems are mostly used in many online applications to filter information and help users in selecting their relevant requirements. It avoids users to become o...
Development of E-Commerce Website Recommender System Using Collaborative Filtering and Deep Learning Techniques
Development of E-Commerce Website Recommender System Using Collaborative Filtering and Deep Learning Techniques
Recommender system or recommendation system is becoming an increasingly important technology on e-commerce websites to help users find products that suit their preferences. However...
Intelligent healthcare recommender system for advanced healthcare services
Intelligent healthcare recommender system for advanced healthcare services
The introduction of cutting-edge technologies has brought about a lot of changes in the healthcare industry. The application of intelligent recommender systems to improve healthcar...
ACKNOWLEDGMENTS
ACKNOWLEDGMENTS
The UP Manila Health Policy Development Hub recognizes the invaluable contribution of the participants in theseries of roundtable discussions listed below:
RTD: Beyond Hospit...
Socio-user Context Aware-Based Recommender System: Context Suggestions for A Better Tourism Recommendation
Socio-user Context Aware-Based Recommender System: Context Suggestions for A Better Tourism Recommendation
The existing tourism recommender system model is mostly predictive analytics for destination recommendations (item recommendation). Limited research has been conducted in the discu...
Data Mining-based Real-Time User-centric Recommender System for Nigerian Tourism Industry
Data Mining-based Real-Time User-centric Recommender System for Nigerian Tourism Industry
The tourism information system in Nigeria is not novel. What is novel is the need to develop reliable real-time recommender systems that can adequately aid tourists in their decisi...
Methodologies to evaluate recommender systems
Methodologies to evaluate recommender systems
In the current digital landscape, recommender systems play a pivotal role in shaping users' online experiences by providing personalized recommendations for relevant products, news...
Integrating contextual sentiment analysis in collaborative recommender systems
Integrating contextual sentiment analysis in collaborative recommender systems
Recently. recommender systems have become a very crucial application in the online market and e-commerce as users are often astounded by choices and preferences and they need help ...


