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1.
Nat Commun ; 14(1): 127, 2023 01 24.
Article in English | MEDLINE | ID: mdl-36693833

ABSTRACT

Little is known about how the brain computes the perceived aesthetic value of complex stimuli such as visual art. Here, we used computational methods in combination with functional neuroimaging to provide evidence that the aesthetic value of a visual stimulus is computed in a hierarchical manner via a weighted integration over both low and high level stimulus features contained in early and late visual cortex, extending into parietal and lateral prefrontal cortices. Feature representations in parietal and lateral prefrontal cortex may in turn be utilized to produce an overall aesthetic value in the medial prefrontal cortex. Such brain-wide computations are not only consistent with a feature-based mechanism for value construction, but also resemble computations performed by a deep convolutional neural network. Our findings thus shed light on the existence of a general neurocomputational mechanism for rapidly and flexibly producing value judgements across an array of complex novel stimuli and situations.


Subject(s)
Brain , Visual Cortex , Brain/diagnostic imaging , Brain Mapping/methods , Prefrontal Cortex/diagnostic imaging , Visual Cortex/diagnostic imaging , Esthetics , Magnetic Resonance Imaging/methods
2.
Nat Hum Behav ; 5(6): 743-755, 2021 06.
Article in English | MEDLINE | ID: mdl-34017097

ABSTRACT

It is an open question whether preferences for visual art can be lawfully predicted from the basic constituent elements of a visual image. Here, we developed and tested a computational framework to investigate how aesthetic values are formed. We show that it is possible to explain human preferences for a visual art piece based on a mixture of low- and high-level features of the image. Subjective value ratings could be predicted not only within but also across individuals, using a regression model with a common set of interpretable features. We also show that the features predicting aesthetic preference can emerge hierarchically within a deep convolutional neural network trained only for object recognition. Our findings suggest that human preferences for art can be explained at least in part as a systematic integration over the underlying visual features of an image.


Subject(s)
Art , Choice Behavior , Esthetics , Neural Networks, Computer , Adolescent , Adult , Female , Humans , Linear Models , Male , Middle Aged , Photic Stimulation , Visual Perception , Young Adult
3.
Curr Opin Behav Sci ; 41: 71-77, 2021 Oct.
Article in English | MEDLINE | ID: mdl-35252481

ABSTRACT

Here we argue that the assignment of subjective value to potential outcomes at the time of decision-making is an active process, in which individual features of a potential outcome of varying degrees of abstraction are represented hierarchically and integrated in a weighted fashion to produce an overall value judgment. We implicate the lateral orbital and medial prefrontal cortex in this function, situating these areas more broadly within a hierarchical integration process that takes place throughout the cortex for the ultimate purpose of valuing options to guide decisions.

4.
Neuron ; 108(4): 594-596, 2020 11 25.
Article in English | MEDLINE | ID: mdl-33242429

ABSTRACT

We review progress and highlight open questions in neuroaesthetics. We argue that computational methods can provide mechanistic insight into how aesthetic judgments are formed, while advocating for deeper collaboration between neuroscientists studying aesthetics and those in the arts and humanities.


Subject(s)
Esthetics , Intersectoral Collaboration , Neurosciences , Humans
5.
Sci Adv ; 6(25): eaba3828, 2020 06.
Article in English | MEDLINE | ID: mdl-32596456

ABSTRACT

Having something to look forward to is a keystone of well-being. Anticipation of future reward, such as an upcoming vacation, can often be more gratifying than the experience itself. Theories suggest the utility of anticipation underpins various behaviors, ranging from beneficial information-seeking to harmful addiction. However, how neural systems compute anticipatory utility remains unclear. We analyzed the brain activity of human participants as they performed a task involving choosing whether to receive information predictive of future pleasant outcomes. Using a computational model, we show three brain regions orchestrate anticipatory utility. Specifically, ventromedial prefrontal cortex tracks the value of anticipatory utility, dopaminergic midbrain correlates with information that enhances anticipation, while sustained hippocampal activity mediates a functional coupling between these regions. Our findings suggest a previously unidentified neural underpinning for anticipation's influence over decision-making and unify a range of phenomena associated with risk and time-delay preference.

6.
Neuron ; 106(4): 687-699.e7, 2020 05 20.
Article in English | MEDLINE | ID: mdl-32187528

ABSTRACT

When individuals learn from observing the behavior of others, they deploy at least two distinct strategies. Choice imitation involves repeating other agents' previous actions, whereas emulation proceeds from inferring their goals and intentions. Despite the prevalence of observational learning in humans and other social animals, a fundamental question remains unaddressed: how does the brain decide which strategy to use in a given situation? In two fMRI studies (the second a pre-registered replication of the first), we identify a neuro-computational mechanism underlying arbitration between choice imitation and goal emulation. Computational modeling, combined with a behavioral task that dissociated the two strategies, revealed that control over behavior was adaptively and dynamically weighted toward the most reliable strategy. Emulation reliability, the model's arbitration signal, was represented in the ventrolateral prefrontal cortex, temporoparietal junction, and rostral cingulate cortex. Our replicated findings illuminate the computations by which the brain decides to imitate or emulate others.


Subject(s)
Brain/physiology , Choice Behavior/physiology , Learning/physiology , Models, Neurological , Adult , Computer Simulation , Female , Goals , Humans , Imitative Behavior/physiology , Magnetic Resonance Imaging , Male
7.
Neuron ; 102(3): 517-519, 2019 05 08.
Article in English | MEDLINE | ID: mdl-31071284

ABSTRACT

In this issue of Neuron, Vikbladh et al. (2019) provide evidence to suggest that the human hippocampus, long known to support spatial memory, also plays a causal role in model-based planning.


Subject(s)
Hippocampus , Spatial Memory , Humans , Temporal Lobe
8.
Nat Commun ; 10(1): 1466, 2019 04 01.
Article in English | MEDLINE | ID: mdl-30931937

ABSTRACT

Behavior deviating from our normative expectations often appears irrational. For example, even though behavior following the so-called matching law can maximize reward in a stationary foraging task, actual behavior commonly deviates from matching. Such behavioral deviations are interpreted as a failure of the subject; however, here we instead suggest that they reflect an adaptive strategy, suitable for uncertain, non-stationary environments. To prove it, we analyzed the behavior of primates that perform a dynamic foraging task. In such nonstationary environment, learning on both fast and slow timescales is beneficial: fast learning allows the animal to react to sudden changes, at the price of large fluctuations (variance) in the estimates of task relevant variables. Slow learning reduces the fluctuations but costs a bias that causes systematic behavioral deviations. Our behavioral analysis shows that the animals solved this bias-variance tradeoff by combining learning on both fast and slow timescales, suggesting that learning on multiple timescales can be a biologically plausible mechanism for optimizing decisions under uncertainty.


Subject(s)
Appetitive Behavior/physiology , Learning/physiology , Reward , Uncertainty , Animals , Behavior, Animal , Macaca mulatta , Male , Models, Theoretical , Time Factors
9.
Nat Commun ; 9(1): 2477, 2018 06 26.
Article in English | MEDLINE | ID: mdl-29946069

ABSTRACT

Serotonin has widespread, but computationally obscure, modulatory effects on learning and cognition. Here, we studied the impact of optogenetic stimulation of dorsal raphe serotonin neurons in mice performing a non-stationary, reward-driven decision-making task. Animals showed two distinct choice strategies. Choices after short inter-trial-intervals (ITIs) depended only on the last trial outcome and followed a win-stay-lose-switch pattern. In contrast, choices after long ITIs reflected outcome history over multiple trials, as described by reinforcement learning models. We found that optogenetic stimulation during a trial significantly boosted the rate of learning that occurred due to the outcome of that trial, but these effects were only exhibited on choices after long ITIs. This suggests that serotonin neurons modulate reinforcement learning rates, and that this influence is masked by alternate, unaffected, decision mechanisms. These results provide insight into the role of serotonin in treating psychiatric disorders, particularly its modulation of neural plasticity and learning.


Subject(s)
Reward , Serotonin/physiology , Animals , Choice Behavior/physiology , Decision Making , Dorsal Raphe Nucleus/physiology , Learning/physiology , Mice , Mice, Transgenic , Models, Neurological , Models, Psychological , Neuronal Plasticity/physiology , Optogenetics , Reinforcement, Psychology , Serotonergic Neurons/physiology , Serotonin Plasma Membrane Transport Proteins/genetics , Serotonin Plasma Membrane Transport Proteins/physiology , Time Factors
10.
PLoS One ; 11(11): e0165840, 2016.
Article in English | MEDLINE | ID: mdl-27829041

ABSTRACT

Positive and negative moods can be treated as prior expectations over future delivery of rewards and punishments. This provides an inferential foundation for the cognitive (judgement) bias task, now widely-used for assessing affective states in non-human animals. In the task, information about affect is extracted from the optimistic or pessimistic manner in which participants resolve ambiguities in sensory input. Here, we report a novel variant of the task aimed at dissecting the effects of affect manipulations on perceptual and value computations for decision-making under ambiguity in humans. Participants were instructed to judge which way a Gabor patch (250ms presentation) was leaning. If the stimulus leant one way (e.g. left), pressing the REWard key yielded a monetary WIN whilst pressing the SAFE key failed to acquire the WIN. If it leant the other way (e.g. right), pressing the SAFE key avoided a LOSS whilst pressing the REWard key incurred the LOSS. The size (0-100 UK pence) of the offered WIN and threatened LOSS, and the ambiguity of the stimulus (vertical being completely ambiguous) were varied on a trial-by-trial basis, allowing us to investigate how decisions were affected by differing combinations of these factors. Half the subjects performed the task in a 'Pleasantly' decorated room and were given a gift (bag of sweets) prior to starting, whilst the other half were in a bare 'Unpleasant' room and were not given anything. Although these treatments had little effect on self-reported mood, they did lead to differences in decision-making. All subjects were risk averse under ambiguity, consistent with the notion of loss aversion. Analysis using a Bayesian decision model indicated that Unpleasant Room subjects were ('pessimistically') biased towards choosing the SAFE key under ambiguity, but also weighed WINS more heavily than LOSSes compared to Pleasant Room subjects. These apparently contradictory findings may be explained by the influence of affect on different processes underlying decision-making, and the task presented here offers opportunities for further dissecting such processes.


Subject(s)
Affect/physiology , Cognition/physiology , Computer Simulation , Decision Making/physiology , Judgment/physiology , Adolescent , Adult , Algorithms , Bayes Theorem , Choice Behavior/physiology , Emotions/physiology , Female , Humans , Male , Photic Stimulation , Psychomotor Performance/physiology , Reward , Young Adult
11.
Elife ; 52016 08 09.
Article in English | MEDLINE | ID: mdl-27504806

ABSTRACT

Recent experiments have shown that animals and humans have a remarkable ability to adapt their learning rate according to the volatility of the environment. Yet the neural mechanism responsible for such adaptive learning has remained unclear. To fill this gap, we investigated a biophysically inspired, metaplastic synaptic model within the context of a well-studied decision-making network, in which synapses can change their rate of plasticity in addition to their efficacy according to a reward-based learning rule. We found that our model, which assumes that synaptic plasticity is guided by a novel surprise detection system, captures a wide range of key experimental findings and performs as well as a Bayes optimal model, with remarkably little parameter tuning. Our results further demonstrate the computational power of synaptic plasticity, and provide insights into the circuit-level computation which underlies adaptive decision-making.


Subject(s)
Adaptation, Physiological , Decision Making , Learning , Neuronal Plasticity/physiology , Uncertainty , Animals , Biophysical Phenomena , Humans , Neural Networks, Computer
12.
Elife ; 52016 04 21.
Article in English | MEDLINE | ID: mdl-27101365

ABSTRACT

When people anticipate uncertain future outcomes, they often prefer to know their fate in advance. Inspired by an idea in behavioral economics that the anticipation of rewards is itself attractive, we hypothesized that this preference of advance information arises because reward prediction errors carried by such information can boost the level of anticipation. We designed new empirical behavioral studies to test this proposal, and confirmed that subjects preferred advance reward information more strongly when they had to wait for rewards for a longer time. We formulated our proposal in a reinforcement-learning model, and we showed that our model could account for a wide range of existing neuronal and behavioral data, without appealing to ambiguous notions such as an explicit value for information. We suggest that such boosted anticipation significantly drives risk-seeking behaviors, most pertinently in gambling.


Subject(s)
Anticipation, Psychological , Choice Behavior , Decision Making , Humans , Reward
13.
Neural Comput ; 25(12): 3093-112, 2013 Dec.
Article in English | MEDLINE | ID: mdl-24047324

ABSTRACT

The matching law constitutes a quantitative description of choice behavior that is often observed in foraging tasks. According to the matching law, organisms distribute their behavior across available response alternatives in the same proportion that reinforcers are distributed across those alternatives. Recently a few biophysically plausible neural network models have been proposed to explain the matching behavior observed in the experiments. Here we study systematically the learning dynamics of these networks while performing a matching task on the concurrent variable interval (VI) schedule. We found that the model neural network can operate in one of three qualitatively different regimes depending on the parameters that characterize the synaptic dynamics and the reward schedule: (1) a matching behavior regime, in which the probability of choosing an option is roughly proportional to the baiting fractional probability of that option; (2) a perseverative regime, in which the network tends to make always the same decision; and (3) a tristable regime, in which the network can either perseverate or choose the two targets randomly approximately with the same probability. Different parameters of the synaptic dynamics lead to different types of deviations from the matching law, some of which have been observed experimentally. We show that the performance of the network depends on the number of stable states of each synapse and that bistable synapses perform close to optimal when the proper learning rate is chosen. Because our model provides a link between synaptic dynamics and qualitatively different behaviors, this work provides us with insight into the effects of neuromodulators on adaptive behaviors and psychiatric disorders.


Subject(s)
Brain/physiology , Choice Behavior/physiology , Neural Networks, Computer , Animals , Decision Making/physiology , Humans , Models, Neurological
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