This paper represents a paradigm shift in what advice agents should provide people. Contrary to what was previously thought, we empirically show that agents that dispense optimal advice will not necessary facilitate the best improvement in people's strategies. Instead, we claim that agents should at times suboptimally advise. We provide results demonstrating the effectiveness of a suboptimal advising approach in extensive experiments in two canonical mixed agent-human advice-giving domains. Our proposed guideline for suboptimal advising is to rely on the level of intuitiveness of the optimal advice as a measure for how much the suboptimal advice presented to the user should drift from the optimal value
Choice selection processes are a family of bilateral games of incomplete information in which a comp...
This study experimentally investigates whether and how the effect of non-binding advice in coordinat...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
This paper studies two suboptimal advice provisioning methods ("advisors") as an alternative to prov...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
One of the ways to make reinforcement learning (RL) more ef- ficient is by utilizing human advice. B...
We consider sequential decision making problems under uncertainty, in which a user has a general ide...
This paper attempts to empirically assess how advice may reduce suboptimality in a portfolio choice ...
One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Bec...
Abstract — This paper considers the problem of providing advice to an autonomous agent when neither ...
Much advice-taking research investigates whether advice weighting accords to normative principles. T...
the date of receipt and acceptance should be inserted later Abstract This paper addresses the proble...
In this article, we study the transfer learning model of action advice under a budget. We focus on r...
People are increasingly likely to obtain advice from algorithms. But what does taking advice from an...
Assistive agents have been used to give advices to the users regarding activities in daily lives. Al...
Choice selection processes are a family of bilateral games of incomplete information in which a comp...
This study experimentally investigates whether and how the effect of non-binding advice in coordinat...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...
This paper studies two suboptimal advice provisioning methods ("advisors") as an alternative to prov...
International audienceWe consider sequential decision making problems under uncertainty , in which a...
One of the ways to make reinforcement learning (RL) more ef- ficient is by utilizing human advice. B...
We consider sequential decision making problems under uncertainty, in which a user has a general ide...
This paper attempts to empirically assess how advice may reduce suboptimality in a portfolio choice ...
One of the ways to make reinforcement learning (RL) more efficient is by utilizing human advice. Bec...
Abstract — This paper considers the problem of providing advice to an autonomous agent when neither ...
Much advice-taking research investigates whether advice weighting accords to normative principles. T...
the date of receipt and acceptance should be inserted later Abstract This paper addresses the proble...
In this article, we study the transfer learning model of action advice under a budget. We focus on r...
People are increasingly likely to obtain advice from algorithms. But what does taking advice from an...
Assistive agents have been used to give advices to the users regarding activities in daily lives. Al...
Choice selection processes are a family of bilateral games of incomplete information in which a comp...
This study experimentally investigates whether and how the effect of non-binding advice in coordinat...
Learning from reinforcements is a promising approach for creating intelligent agents. However, reinf...