Computational algorithms and the use of artificial intelligence (AI) are beginning to venture into clinical psychology to explain the computational mechanisms behind mental illness. Anxiety is one of the most prevalent mental disorders worldwide; however, it is relatively recent that computational models use AI to study it. A very important model uses artificial reinforcement learning agents with anxious decision-making to capture how the level of pessimism leads to a range of features of anxious behavior. This model was applied in a new environment to better understand how pessimism and the level of aversion in the environment impact the development of anxious symptomatology. Hence, a reinforcement learning agent was implemented in the e...
In everyday life, the outcomes of our actions are rarely certain. Further, we often lack the informa...
This paper presents a temporal dynamic model of anxiety states and traits for an individual. Anxiety...
Aversive learning is characterised by rapid learning which is highly resistant to extinction. This h...
Computational methods are increasingly being applied to the study of psychiatric disorders. Often, t...
Anxiety disorders are the most common mental health disorders and comprise a large number of years l...
The human mind is undoubtedly one of the most complicated entities in this world. The collection of ...
Individuals who are prone to experiencing high levels of anxiety and depression often exhibit dysfun...
Computational neuroscience offers a relatively new way to approach the systems neuroscience of avers...
Behavioural inhibition is a key anxiety-like behaviour in rodents and humans, distinct from avoidanc...
A goal of computational psychiatry is to ground symptoms in basic mechanisms. Theory suggests that a...
Scientific discovery is a driving force for progress involving creative problem-solving processes to...
Psychological distress is a major contributor to human physiology and pathophysiology, and it has be...
Background Serious and debilitating symptoms of anxiety are the most common mental health problem wo...
BACKGROUND: Serious and debilitating symptoms of anxiety are the most common mental health problem w...
In everyday life, the outcomes of our actions are rarely certain. Further, we often lack the informa...
In everyday life, the outcomes of our actions are rarely certain. Further, we often lack the informa...
This paper presents a temporal dynamic model of anxiety states and traits for an individual. Anxiety...
Aversive learning is characterised by rapid learning which is highly resistant to extinction. This h...
Computational methods are increasingly being applied to the study of psychiatric disorders. Often, t...
Anxiety disorders are the most common mental health disorders and comprise a large number of years l...
The human mind is undoubtedly one of the most complicated entities in this world. The collection of ...
Individuals who are prone to experiencing high levels of anxiety and depression often exhibit dysfun...
Computational neuroscience offers a relatively new way to approach the systems neuroscience of avers...
Behavioural inhibition is a key anxiety-like behaviour in rodents and humans, distinct from avoidanc...
A goal of computational psychiatry is to ground symptoms in basic mechanisms. Theory suggests that a...
Scientific discovery is a driving force for progress involving creative problem-solving processes to...
Psychological distress is a major contributor to human physiology and pathophysiology, and it has be...
Background Serious and debilitating symptoms of anxiety are the most common mental health problem wo...
BACKGROUND: Serious and debilitating symptoms of anxiety are the most common mental health problem w...
In everyday life, the outcomes of our actions are rarely certain. Further, we often lack the informa...
In everyday life, the outcomes of our actions are rarely certain. Further, we often lack the informa...
This paper presents a temporal dynamic model of anxiety states and traits for an individual. Anxiety...
Aversive learning is characterised by rapid learning which is highly resistant to extinction. This h...