Research has shown that personalization of health interventions can contribute to an improved effectiveness. Reinforcement learning algorithms can be used to perform such tailoring. In this paper, we present a cluster-based reinforcement learning approach which learns optimal policies for groups of users. Such an approach can speed up the learning process while still giving a level of personalization. We apply both online and batch learning to learn policies over the clusters and introduce a publicly available simulator which we have developed to evaluate the approach. The results show batch learning significantly outperforms online learning. Furthermore, near-optimal clustering is found which proves to be beneficial in learning significant...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
e-onlyDemand response is often defined as an optimal control problem. However, the practical applica...
Personalisation has become omnipresent in society. For the domain of health and wellbeing such perso...
The first Dataset of the five runs done. If you would like to have access to any or all of the other...
Personalization of support in health and wellbeing settings is challenging. While personalization ha...
Suboptimal health related behaviors and habits; and resulting chronic diseases are responsible for m...
A general technique is proposed for embedding on-line clustering algorithms based on competitive lea...
While reinforcement learning (RL) has proven to be the approach of choice for tackling many complex ...
A general technique is proposed for embedding online clustering algo-rithms based on competitive lea...
Adverse and suboptimal health behaviors and chronic diseases are responsible from a substantial majo...
The demand and interest for personalized, efficient, and inexpensive healthcare solutions has signif...
Rationale: Covid-19 is certainly one of the worst pandemics ever. In the absence of a vaccine, class...
Diseases can have a huge impact on the quality of life of the human population. Humans have always b...
We introduce an end-to-end reinforcement learning (RL) solution for the problem of sending personali...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
e-onlyDemand response is often defined as an optimal control problem. However, the practical applica...
Personalisation has become omnipresent in society. For the domain of health and wellbeing such perso...
The first Dataset of the five runs done. If you would like to have access to any or all of the other...
Personalization of support in health and wellbeing settings is challenging. While personalization ha...
Suboptimal health related behaviors and habits; and resulting chronic diseases are responsible for m...
A general technique is proposed for embedding on-line clustering algorithms based on competitive lea...
While reinforcement learning (RL) has proven to be the approach of choice for tackling many complex ...
A general technique is proposed for embedding online clustering algo-rithms based on competitive lea...
Adverse and suboptimal health behaviors and chronic diseases are responsible from a substantial majo...
The demand and interest for personalized, efficient, and inexpensive healthcare solutions has signif...
Rationale: Covid-19 is certainly one of the worst pandemics ever. In the absence of a vaccine, class...
Diseases can have a huge impact on the quality of life of the human population. Humans have always b...
We introduce an end-to-end reinforcement learning (RL) solution for the problem of sending personali...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
e-onlyDemand response is often defined as an optimal control problem. However, the practical applica...