10 pagesInternational audienceWe consider an agent that must choose repeatedly among several actions. Each action has a certain probability of giving the agent an energy reward, and costs may be associated with switching between actions. The agent does not know which action has the highest reward probability, and the probabilities change randomly over time. We study two learning rules that have been widely used to model decision-making processes in animals-one deterministic and the other stochastic. In particular, we examine the influence of the rules' 'learning rate' on the agent's energy gain. We compare the performance of each rule with the best performance attainable when the agent has either full knowledge or no knowledge of the enviro...
Many species are able to learn to associate behaviours with rewards as this gives fitness advantages...
AbstractLearning to act in a multiagent environment is a difficult problem since the normal definiti...
Reinforcement learning is a promising technique for learning agents to adapt their own strategies in...
10 pagesInternational audienceWe consider an agent that must choose repeatedly among several actions...
In order to understand the development of non-genetically encoded actions during an animal's lifespa...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
<p><b>A</b> The environmental state changes stochastically with rates between being rewarding, neut...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
Agents living in volatile environments must be able to detect changes in contingencies while refrain...
A principle of choice in animal decision-making named probability matching (PM) has long been detect...
In recent decades, Reinforcement Learning (RL) has emerged as an effective approach to address compl...
The paper investigates a stochastic model where two agents (persons, companies, institutions, states...
The quality of a chosen partner can be one of the most significant factors affecting an animal’s lon...
We consider a learning problem where the decision maker interacts with a standard Markov decision pr...
Behavior deviating from our normative expectations often appears irrational. For example, even thoug...
Many species are able to learn to associate behaviours with rewards as this gives fitness advantages...
AbstractLearning to act in a multiagent environment is a difficult problem since the normal definiti...
Reinforcement learning is a promising technique for learning agents to adapt their own strategies in...
10 pagesInternational audienceWe consider an agent that must choose repeatedly among several actions...
In order to understand the development of non-genetically encoded actions during an animal's lifespa...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
<p><b>A</b> The environmental state changes stochastically with rates between being rewarding, neut...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
Agents living in volatile environments must be able to detect changes in contingencies while refrain...
A principle of choice in animal decision-making named probability matching (PM) has long been detect...
In recent decades, Reinforcement Learning (RL) has emerged as an effective approach to address compl...
The paper investigates a stochastic model where two agents (persons, companies, institutions, states...
The quality of a chosen partner can be one of the most significant factors affecting an animal’s lon...
We consider a learning problem where the decision maker interacts with a standard Markov decision pr...
Behavior deviating from our normative expectations often appears irrational. For example, even thoug...
Many species are able to learn to associate behaviours with rewards as this gives fitness advantages...
AbstractLearning to act in a multiagent environment is a difficult problem since the normal definiti...
Reinforcement learning is a promising technique for learning agents to adapt their own strategies in...