TopicNeuro

expectation

29 Seminars22 ePosters

Latest

SeminarNeuroscience

Cognitive maps as expectations learned across episodes – a model of the two dentate gyrus blades

Andrej Bicanski
Max Planck Institute for Human Cognitive and Brain Sciences
Mar 12, 2025

How can the hippocampal system transition from episodic one-shot learning to a multi-shot learning regime and what is the utility of the resultant neural representations? This talk will explore the role of the dentate gyrus (DG) anatomy in this context. The canonical DG model suggests it performs pattern separation. More recent experimental results challenge this standard model, suggesting DG function is more complex and also supports the precise binding of objects and events to space and the integration of information across episodes. Very recent studies attribute pattern separation and pattern integration to anatomically distinct parts of the DG (the suprapyramidal blade vs the infrapyramidal blade). We propose a computational model that investigates this distinction. In the model the two processing streams (potentially localized in separate blades) contribute to the storage of distinct episodic memories, and the integration of information across episodes, respectively. The latter forms generalized expectations across episodes, eventually forming a cognitive map. We train the model with two data sets, MNIST and plausible entorhinal cortex inputs. The comparison between the two streams allows for the calculation of a prediction error, which can drive the storage of poorly predicted memories and the forgetting of well-predicted memories. We suggest that differential processing across the DG aids in the iterative construction of spatial cognitive maps to serve the generation of location-dependent expectations, while at the same time preserving episodic memory traces of idiosyncratic events.

SeminarNeuroscienceRecording

Bayesian expectation in the perception of the timing of stimulus sequences

Max De Luca
University of Birmingham
Dec 13, 2023

In the current virtual journal club Dr Di Luca will present findings from a series of psychophysical investigations where he measured sensitivity and bias in the perception of the timing of stimuli. He will present how improved detection with longer sequences and biases in reporting isochrony can be accounted for by optimal statistical predictions. Among his findings was also that the timing of stimuli that occasionally deviate from a regularly paced sequence is perceptually distorted to appear more regular. Such change depends on whether the context these sequences are presented is also regular. Dr Di Luca will present a Bayesian model for the combination of dynamically updated expectations, in the form of a priori probability, with incoming sensory information. These findings contribute to the understanding of how the brain processes temporal information to shape perceptual experiences.

SeminarNeuroscienceRecording

Consciousness in the age of mechanical minds

Robert Pepperell
Cardiff Metropolitan University
Jun 1, 2023

We are now clearly entering a new age in our relationship with machines. The power of AI natural language processors and image generators has rapidly exceeded the expectations of even those who developed them. Serious questions are now being asked about the extent to which machines could become — or perhaps already are — sentient or conscious. Do AI machines understand the instructions they are given and the answers they provide? In this talk I will consider the prospects for conscious machines, by which I mean machines that have feelings, know about their own existence, and about ours. I will suggest that the recent focus on information processing in models of consciousness, in which the brain is treated as a kind of digital computer, have mislead us about the nature of consciousness and how it is produced in biological systems. Treating the brain as an energy processing system is more likely to yield answers to these fundamental questions and help us understand how and when machines might become minds.

SeminarNeuroscience

Naturalistic violation of expectations reveal hierarchical surprise responses in the human brain

Pablo Grassi
Mar 10, 2023
SeminarNeuroscienceRecording

Modelling metaphor comprehension as a form of analogizing

Gerard Steen
University of Amsterdam
Nov 30, 2022

What do people do when they comprehend language in discourse? According to many psychologists, they build and maintain cognitive representations of utterances in four complementary mental models for discourse that interact with each other: the surface text, the text base, the situation model, and the context model. When people encounter metaphors in these utterances, they need to incorporate them into each of these mental representations for the discourse. Since influential metaphor theories define metaphor as a form of (figurative) analogy, involving cross-domain mapping of a smaller or greater extent, the general expectation has been that metaphor comprehension is also based on analogizing. This expectation, however, has been partly borne out by the data, but not completely. There is no one-to-one relationship between metaphor as (conceptual) structure (analogy) and metaphor as (psychological) process (analogizing). According to Deliberate Metaphor Theory (DMT), only some metaphors are handled by analogy. Instead, most metaphors are presumably handled by lexical disambiguation. This is a hypothesis that brings together most metaphor research in a provocatively new way: it means that most metaphors are not processed metaphorically, which produces a paradox of metaphor. In this talk I will sketch out how this paradox arises and how it can be resolved by a new version of DMT, which I have described in my forthcoming book Slowing metaphor down: Updating Deliberate Metaphor Theory (currently under review). In this theory, the distinction between, but also the relation between, analogy in metaphorical structure versus analogy in metaphorical process is of central importance.

SeminarNeuroscienceRecording

Pitch and Time Interact in Auditory Perception

Jesse Pazdera
McMaster University, Canada
Oct 26, 2022

Research into pitch perception and time perception has typically treated the two as independent processes. However, previous studies of music and speech perception have suggested that pitch and timing information may be processed in an integrated manner, such that the pitch of an auditory stimulus can influence a person’s perception, expectation, and memory of its duration and tempo. Typically, higher-pitched sounds are perceived as faster and longer in duration than lower-pitched sounds with identical timing. We conducted a series of experiments to better understand the limits of this pitch-time integrality. Across several experiments, we tested whether the higher-equals-faster illusion generalizes across the broader frequency range of human hearing by asking participants to compare the tempo of a repeating tone played in one of six octaves to a metronomic standard. When participants heard tones from all six octaves, we consistently found an inverted U-shaped effect of the tone’s pitch height, such that perceived tempo peaked between A4 (440 Hz) and A5 (880 Hz) and decreased at lower and higher octaves. However, we found that the decrease in perceived tempo at extremely high octaves could be abolished by exposing participants to high-pitched tones only, suggesting that pitch-induced timing biases are context sensitive. We additionally tested how the timing of an auditory stimulus influences the perception of its pitch, using a pitch discrimination task in which probe tones occurred early, late, or on the beat within a rhythmic context. Probe timing strongly biased participants to rate later tones as lower in pitch than earlier tones. Together, these results suggest that pitch and time exert a bidirectional influence on one another, providing evidence for integrated processing of pitch and timing information in auditory perception. Identifying the mechanisms behind this pitch-time interaction will be critical for integrating current models of pitch and tempo processing.

SeminarNeuroscienceRecording

Linking GWAS to pharmacological treatments for psychiatric disorders

Aurina Arnatkeviciute
Monash University
Aug 19, 2022

Genome-wide association studies (GWAS) have identified multiple disease-associated genetic variations across different psychiatric disorders raising the question of how these genetic variants relate to the corresponding pharmacological treatments. In this talk, I will outline our work investigating whether functional information from a range of open bioinformatics datasets such as protein interaction network (PPI), brain eQTL, and gene expression pattern across the brain can uncover the relationship between GWAS-identified genetic variation and the genes targeted by current drugs for psychiatric disorders. Focusing on four psychiatric disorders---ADHD, bipolar disorder, schizophrenia, and major depressive disorder---we assess relationships between the gene targets of drug treatments and GWAS hits and show that while incorporating information derived from functional bioinformatics data, such as the PPI network and spatial gene expression, can reveal links for bipolar disorder, the overall correspondence between treatment targets and GWAS-implicated genes in psychiatric disorders rarely exceeds null expectations. This relatively low degree of correspondence across modalities suggests that the genetic mechanisms driving the risk for psychiatric disorders may be distinct from the pathophysiological mechanisms used for targeting symptom manifestations through pharmacological treatments and that novel approaches for understanding and treating psychiatric disorders may be required.

SeminarNeuroscienceRecording

What is Cognitive Neuropsychology Good For? An Unauthorized Biography

Alfonso Caramazza
Cognitive Neuropsychology Laboratory, Harvard University, USA; Center for Mind/Brain Sciences (CIMeC), University of Trento, Italy
Feb 23, 2022

Abstract: There is no doubt that the study of brain damaged individuals has contributed greatly to our understanding of the mind/brain. Within this broad approach, cognitive neuropsychology accentuates the cognitive dimension: it investigates the structure and organization of perceptual, motor, cognitive, and language systems – prerequisites for understanding the functional organization of the brain – through the analysis of their dysfunction following brain damage. Significant insights have come specifically from this paradigm. But progress has been slow and enthusiasm for this approach has waned somewhat in recent years, and the use of existing findings to constrain new theories has also waned. What explains the current diminished status of cognitive neuropsychology? One reason may be failure to calibrate expectations about the effective contribution of different subfields of the study of the mind/brain as these are determined by their natural peculiarities – such factors as the types of available observations and their complexity, opportunity of access to such observations, the possibility of controlled experimentation, and the like. Here, I also explore the merits and limitations of cognitive neuropsychology, with particular focus on the role of intellectual, pragmatic, and societal factors that determine scientific practice within the broader domains of cognitive science/neuroscience. I conclude on an optimistic note about the continuing unique importance of cognitive neuropsychology: although limited to the study of experiments of nature, it offers a privileged window into significant aspects of the mind/brain that are not easily accessible through other approaches. Biography: Alfonso Caramazza's research has focussed extensively on how words and their meanings are represented in the brain. His early pioneering studies helped to reformulate our thinking about Broca's aphasia (not limited to production) and formalised the logic of patient-based neuropsychology. More recently he has been instrumental in reconsidering popular claims about embodied cognition.

SeminarNeuroscienceRecording

Dynamic dopaminergic signaling probabilistically controls the timing of self-timed movements

Allison Hamilos
Assad Lab, Harvard University
Feb 23, 2022

Human movement disorders and pharmacological studies have long suggested molecular dopamine modulates the pace of the internal clock. But how does the endogenous dopaminergic system influence the timing of our movements? We examined the relationship between dopaminergic signaling and the timing of reward-related, self-timed movements in mice. Animals were trained to initiate licking after a self-timed interval following a start cue; reward was delivered if the animal’s first lick fell within a rewarded window (3.3-7 s). The first-lick timing distributions exhibited the scalar property, and we leveraged the considerable variability in these distributions to determine how the activity of the dopaminergic system related to the animals’ timing. Surprisingly, dopaminergic signals ramped-up over seconds between the start-timing cue and the self-timed movement, with variable dynamics that predicted the movement/reward time, even on single trials. Steeply rising signals preceded early initiation, whereas slowly rising signals preceded later initiation. Higher baseline signals also predicted earlier self-timed movement. Optogenetic activation of dopamine neurons during self-timing did not trigger immediate movements, but rather caused systematic early-shifting of the timing distribution, whereas inhibition caused late-shifting, as if dopaminergic manipulation modulated the moment-to-moment probability of unleashing the planned movement. Consistent with this view, the dynamics of the endogenous dopaminergic signals quantitatively predicted the moment-by-moment probability of movement initiation. We conclude that ramping dopaminergic signals, potentially encoding dynamic reward expectation, probabilistically modulate the moment-by-moment decision of when to move. (Based on work from Hamilos et al., eLife, 2021).

SeminarNeuroscienceRecording

Neurocognitive mechanisms of enhanced implicit temporal processing in action video game players

Francois R. Foerster
Giersch Lab, INSERM U1114
Feb 23, 2022

Playing action video games involves both explicit (conscious) and implicit (non-conscious) expectations of timed events, such as the appearance of foes. While studies revealed that explicit attention skills are improved in action video game players (VGPs), their implicit skills remained untested. To this end, we investigated explicit and implicit temporal processing in VGPs and non-VGPs (control participants). In our variable foreperiod task, participants were immersed in a virtual reality and instructed to respond to a visual target appearing at variable delays after a cue. I will present behavioral, oculomotor and EEG data and discuss possible markers of the implicit passage of time and explicit temporal attention processing. All evidence indicates that VGPs have enhanced implicit skills to track the passage of time, which does not require conscious attention. Thus, action video game play may improve a temporal processing found altered in psychopathologies, such as schizophrenia. Could digital (game-based) interventions help remediate temporal processing deficits in psychiatric populations?

SeminarNeuroscienceRecording

NaV Long-term Inactivation Regulates Adaptation in Place Cells and Depolarization Block in Dopamine Neurons

Carmen Canavier
LSU Health Sciences Center, New Orleans
Feb 9, 2022

In behaving rodents, CA1 pyramidal neurons receive spatially-tuned depolarizing synaptic input while traversing a specific location within an environment called its place. Midbrain dopamine neurons participate in reinforcement learning, and bursts of action potentials riding a depolarizing wave of synaptic input signal rewards and reward expectation. Interestingly, slice electrophysiology in vitro shows that both types of cells exhibit a pronounced reduction in firing rate (adaptation) and even cessation of firing during sustained depolarization. We included a five state Markov model of NaV1.6 (for CA1) and NaV1.2 (for dopamine neurons) respectively, in computational models of these two types of neurons. Our simulations suggest that long-term inactivation of this channel is responsible for the adaptation in CA1 pyramidal neurons, in response to triangular depolarizing current ramps. We also show that the differential contribution of slow inactivation in two subpopulations of midbrain dopamine neurons can account for their different dynamic ranges, as assessed by their responses to similar depolarizing ramps. These results suggest long-term inactivation of the sodium channel is a general mechanism for adaptation.

SeminarNeuroscience

Heartbeat-based auditory regularities induce prediction in human wakefulness and sleep

Marzia de Lucia
Laboratoire de Recherche en Neuroimagerie (LREN), University Hospital (CHUV) and University of Lausanne (UNIL)
Feb 8, 2022

Exposure to sensory regularities in the environment induces the human brain to form expectations about incoming stimuli and remains partially preserved in the absence of consciousness (i.e. coma and sleep). While regularity often refers to stimuli presented at a fixed pace, we recently explored whether auditory prediction extends to pseudo-regular sequences where sensory prediction is induced by locking sound onsets to heartbeat signals and whether it can occur across vigilance states. In a series of experiments in healthy volunteers, we found neural and cardiac evidence of auditory prediction during heartbeat-based auditory regularities in wakefulness and N2 sleep. This process could represent an important mechanism for detecting unexpected stimuli in the environment even in states of limited conscious and attentional resources.

SeminarNeuroscienceRecording

An economic decision-making model of anticipated surprise with dynamic expectation

Taro Toyoizumi
RIKEN
Dec 8, 2021

When making decision under risk, people often exhibit behaviours that classical economic theories cannot explain. Newer models that attempt to account for these ‘irrational’ behaviours often lack neuroscience bases and require the introduction of subjective and problem-specific constructs. Here, we present a decision-making model inspired by the prediction error signals and introspective neuronal replay reported in the brain. In the model, decisions are chosen based on ‘anticipated surprise’, defined by a nonlinear average of the differences between individual outcomes and a reference point. The reference point is determined by the expected value of the possible outcomes, which can dynamically change during the mental simulation of decision-making problems involving sequential stages. Our model elucidates the contribution of each stage to the appeal of available options in a decision-making problem. This allows us to explain several economic paradoxes and gambling behaviours. Our work could help bridge the gap between decision-making theories in economics and neurosciences.

SeminarNeuroscienceRecording

Feature selectivity can explain mismatch signals in mouse visual cortex

Tomaso Muzzu
Saleem lab, University College London
Oct 20, 2021

Sensory experience often depends on one’s own actions, including self-motion. Theories of predictive coding postulate that actions are regulated by calculating prediction error, which is the difference between sensory experience and expectation based on self-generated actions. Signals consistent with prediction error have been reported in mouse visual cortex (V1) when visual flow coupled to running was unexpectedly stopped. Here, we show such signals can be elicited by visual stimuli uncoupled to animal’s running. We recorded V1 neurons while presenting drifting gratings that unexpectedly stopped. We found strong responses to visual perturbations, which were enhanced during running. Perturbation responses were strongest in the preferred orientation of individual neurons and perturbation responsive neurons were more likely to prefer slow visual speeds. Our results indicate that prediction error signals can be explained by the convergence of known motor and sensory signals, providing a purely sensory and motor explanation for purported mismatch signals.

SeminarNeuroscienceRecording

What is the function of auditory cortex when it develops in the absence of acoustic input?

Steve Lomber
McGill University
Oct 14, 2021

Cortical plasticity is the neural mechanism by which the cerebrum adapts itself to its environment, while at the same time making it vulnerable to impoverished sensory or developmental experiences. Like the visual system, auditory development passes through a series of sensitive periods in which circuits and connections are established and then refined by experience. Current research is expanding our understanding of cerebral processing and organization in the deaf. In the congenitally deaf, higher-order areas of "deaf" auditory cortex demonstrate significant crossmodal plasticity with neurons responding to visual and somatosensory stimuli. This crucial cerebral function results in compensatory plasticity. Not only can the remaining inputs reorganize to substitute for those lost, but this additional circuitry also confers enhanced abilities to the remaining systems. In this presentation we will review our present understanding of the structure and function of “deaf” auditory cortex using psychophysical, electrophysiological, and connectional anatomy approaches and consider how this knowledge informs our expectations of the capabilities of cochlear implants in the developing brain.

SeminarNeuroscienceRecording

Learning and updating structured knowledge

Oded Bein
Niv lab, Princeton University
Oct 6, 2021

During our everyday lives, much of what we experience is familiar and predictable. We typically follow the same morning routine, take the same route to work, and encounter the same colleagues. However, every once in a while, we encounter a surprising event that violates our expectations. When we encounter such violations of our expectations, it is adaptive to update our internal model of the world in order to make better predictions in the future. The hippocampus is thought to support both the learning of the predictable structure of our environment, as well as the detection and encoding of violations. However, the hippocampus is a complex and heterogeneous structure, composed of different subfields that are thought to subserve different functions. As such, it is not yet known how the hippocampus accomplishes the learning and updating of structured knowledge. Using behavioral methods and high-resolution fMRI, I'll show that during learning of repeated and predicted events, hippocampal subfields differentially integrate and separate event representations, thus learning the structure of ongoing experience. I then move on to discuss how when events violate our predictions, there is a shift in communication between hippocampal subfields, potentially allowing for efficient encoding of the novel and surprising information. If time permits, I'll present an additional behavioral study showing that violations of predictions promote detailed memories. Together, these studies advance our understanding of how we adaptively learn and update our knowledge.

SeminarNeuroscienceRecording

Neural dynamics of probabilistic information processing in humans and recurrent neural networks

Nuttida Rungratsameetaweemana
Sejnowski lab, The Salk Institute
Oct 6, 2021

In nature, sensory inputs are often highly structured, and statistical regularities of these signals can be extracted to form expectation about future sensorimotor associations, thereby optimizing behavior. One of the fundamental questions in neuroscience concerns the neural computations that underlie these probabilistic sensorimotor processing. Through a recurrent neural network (RNN) model and human psychophysics and electroencephalography (EEG), the present study investigates circuit mechanisms for processing probabilistic structures of sensory signals to guide behavior. We first constructed and trained a biophysically constrained RNN model to perform a series of probabilistic decision-making tasks similar to paradigms designed for humans. Specifically, the training environment was probabilistic such that one stimulus was more probable than the others. We show that both humans and the RNN model successfully extract information about stimulus probability and integrate this knowledge into their decisions and task strategy in a new environment. Specifically, performance of both humans and the RNN model varied with the degree to which the stimulus probability of the new environment matched the formed expectation. In both cases, this expectation effect was more prominent when the strength of sensory evidence was low, suggesting that like humans, our RNNs placed more emphasis on prior expectation (top-down signals) when the available sensory information (bottom-up signals) was limited, thereby optimizing task performance. Finally, by dissecting the trained RNN model, we demonstrate how competitive inhibition and recurrent excitation form the basis for neural circuitry optimized to perform probabilistic information processing.

SeminarNeuroscience

Understanding the role of prediction in sensory encoding

Jason Mattingley
Monash Biomedical Imaging
Jul 29, 2021

At any given moment the brain receives more sensory information than it can use to guide adaptive behaviour, creating the need for mechanisms that promote efficient processing of incoming sensory signals. One way in which the brain might reduce its sensory processing load is to encode successive presentations of the same stimulus in a more efficient form, a process known as neural adaptation. Conversely, when a stimulus violates an expected pattern, it should evoke an enhanced neural response. Such a scheme for sensory encoding has been formalised in predictive coding theories, which propose that recent experience establishes expectations in the brain that generate prediction errors when violated. In this webinar, Professor Jason Mattingley will discuss whether the encoding of elementary visual features is modulated when otherwise identical stimuli are expected or unexpected based upon the history of stimulus presentation. In humans, EEG was employed to measure neural activity evoked by gratings of different orientations, and multivariate forward modelling was used to determine how orientation selectivity is affected for expected versus unexpected stimuli. In mice, two-photon calcium imaging was used to quantify orientation tuning of individual neurons in the primary visual cortex to expected and unexpected gratings. Results revealed enhanced orientation tuning to unexpected visual stimuli, both at the level of whole-brain responses and for individual visual cortex neurons. Professor Mattingley will discuss the implications of these findings for predictive coding theories of sensory encoding. Professor Jason Mattingley is a Laureate Fellow and Foundation Chair in Cognitive Neuroscience at The University of Queensland. His research is directed toward understanding the brain processes that support perception, selective attention and decision-making, in health and disease.

SeminarNeuroscienceRecording

Active sleep in flies: the dawn of consciousness

Bruno van Swinderen
University of Queensland
Jul 19, 2021

The brain is a prediction machine. Yet the world is never entirely predictable, for any animal. Unexpected events are surprising and this typically evokes prediction error signatures in animal brains. In humans such mismatched expectations are often associated with an emotional response as well. Appropriate emotional responses are understood to be important for memory consolidation, suggesting that valence cues more generally constitute an ancient mechanism designed to potently refine and generalize internal models of the world and thereby minimize prediction errors. On the other hand, abolishing error detection and surprise entirely is probably also maladaptive, as this might undermine the very mechanism that brains use to become better prediction machines. This paradoxical view of brain functions as an ongoing tug-of-war between prediction and surprise suggests a compelling new way to study and understand the evolution of consciousness in animals. I will present approaches to studying attention and prediction in the tiny brain of the fruit fly, Drosophila melanogaster. I will discuss how an ‘active’ sleep stage (termed rapid eye movement – REM – sleep in mammals) may have evolved in the first animal brains as a mechanism for optimizing prediction in motile creatures confronted with constantly changing environments. A role for REM sleep in emotional regulation could thus be better understood as an ancient sleep function that evolved alongside selective attention to maintain an adaptive balance between prediction and surprise. This view of active sleep has some interesting implications for the evolution of subjective awareness and consciousness.

SeminarNeuroscience

Models of Core Knowledge (Physics, Really)

Tomer Ullman
Harvard University
Jun 2, 2021

Even young children seem to have an early understanding of the world around them, and the people in it. Before children can reliably say "ball", "wall", or "Saul", they expect balls to not go through walls, and for Saul to go right for a ball (if there's no wall). What is the formal conceptual structure underlying this commonsense reasoning about objects and agents? I will raise several possibilities for models underlying core intuitive physics as a way of talking about models of core knowledge and intuitive theories more generally. In particular, I will present some recent ML work trying to capture early expectations about object solidly, cohesion, and permanence, that relies on a rough-derendering approach.

SeminarNeuroscience

Reflections of action, expectation, and experience in mouse auditory cortex

David Schneider
New York University
Apr 12, 2021
SeminarNeuroscience

Harnessing Mindset in 21st Century Healthcare

Alia Crum
Stanford
Feb 1, 2021

Mindsets are core assumptions about the nature and workings of things in the world that orient us to a particular set of attributions, expectations, and goals. Our study of mindsets is, in part, inspired by research on the placebo effect, a robust demonstration of the ability of mindsets, conscious or subconscious, to elicit physiological changes in the body. This talk will explore the role of mindsets in three stages of chronic disease progression: genetic predisposition, behavioral prevention, and clinical treatment. I will discuss the mechanisms through which mindsets influence health as well as the myriad ways that mindsets can be more effectively leveraged to motivate healthy behaviors and improve 21st century healthcare.

SeminarNeuroscience

Predictive processing in the macaque frontal cortex during time estimation

Nicolas Meirhaeghe
Jazayeri lab, MIT
Jan 13, 2021

According to the theory of predictive processing, expectations modulate neural activity so as to optimize the processing of sensory inputs expected in the current environment. While there is accumulating evidence that the brain indeed operates under this principle, most of the attention has been placed on mechanisms that rely on static coding properties of neurons. The potential contribution of dynamical features, such as those reflected in the evolution of neural population dynamics, has thus far been overlooked. In this talk, I will present evidence for a novel mechanism for predictive processing in the temporal domain which relies on neural population dynamics. I will use recordings from the frontal cortex of macaques trained on a time interval reproduction task and show how neural dynamics can be directly related to animals’ temporal expectations, both in a stationary environment and during learning.

SeminarNeuroscienceRecording

The Gist of False Memory

Shaul Hochstein
Hebrew University
Nov 24, 2020

It has long been known that when viewing a set of images, we misjudge individual elements as being closer to the mean than they are (Hollingworth, 1910) and recall seeing the (absent) set mean (Deese, 1959; Roediger & McDermott (1995). Recent studies found that viewing sets of images, simultaneously or sequentially, leads to perception of set statistics (mean, range) with poor memory for individual elements. Ensemble perception was found for sets of simple images (e.g. circles varying in size or brightness; lines of varying orientation), complex objects (e.g. faces of varying emotion), as well as for objects belonging to the same category. When the viewed set does not include its mean or prototype, nevertheless, observers report and act as if they have seen this central image or object – a form of false memory. Physiologically, detailed sensory information at cortical input levels is processed hierarchically to form an integrated scene gist at higher levels. However, we are aware of the gist before the details. We propose that images and objects belonging to a set or category are represented as their gist, mean or prototype, plus individual differences from that gist. Under constrained viewing conditions, only the gist is perceived and remembered. This theory also provides a basis for compressed neural representation. Extending this theory to scenes and episodes supplies a generalized basis for false memories. They seem right, match generalized expectations, so are believable without challenging examination. This theory could be tested by analyzing the typicality of false memories, compared to rejected alternatives.

SeminarNeuroscienceRecording

Exploration and expectation: between attention and eye movements

Shlomit Yuval Greenberg
Tel Aviv University
Nov 10, 2020
SeminarNeuroscienceRecording

Growing up in Science

Andre Marques-Smith
CoMind
Jul 31, 2020

Have you ever wondered what your advisor struggled with as a graduate student? What they struggle with now? Growing up in science is a conversation series featuring personal narratives of becoming and being a scientist, with a focus on the unspoken challenges of a life in science. Growing up in Science was started in 2014 at New York University and is now worldwide. This article describes the origin and impact of the series. At a typical Growing up in Science event, one faculty member shares their life story, with a focus on struggles, failures, doubts, detours, and weaknesses. Common topics include dealing with expectations, impostor syndrome, procrastination, luck, rejection, conflicts with advisors, and work-life balance, life outside academia but these topics are always embedded in the speaker’s broader narrative. Cortex Club is hosting its first Growing up in science event! Join us on Friday the 31st July at 4pm for hearing the unofficial story of Dr André Marques-Smith, computational neuroscientist at CoMind (read his official and unofficial story at https://cortexclub.com/event/growing-up-in-science-oxford/). Details to join the talk will be circulated via the mailing list (to join our mailing list, follow the instructions at https://cortexclub.com/join-us/).

ePosterNeuroscience

Differential coding of valence and expectation signals across the dopaminergic system

Sarah-Julie Bouchard, Joel Boutin, Martin Levesque, Vincent Breton-Provencher

COSYNE 2025

ePosterNeuroscience

Expectation management in humans and LLMs

Benjamin Menashe, Austin Drake, Michal Ben-Shachar

COSYNE 2025

ePosterNeuroscience

Expectation-modulated temporal dynamics in a sensory neural population during behavior.

Julia Gorman, Tim Gentner, Timothy Sainburg, Trevor McPherson

COSYNE 2025

ePosterNeuroscience

Behavioral readout of sensory-driven temporal expectation in mice

Tim A. Wendlandt, Julia U. Henschke, Linda Sempf, Peter Vavra, Patricia Wenk, Eike Budinger, Toemme Noesselt, Janelle M. Pakan
ePosterNeuroscience

Sensory expectations shape neural population dynamics during reaching

Jonathan A Michaels, Mehrdad Kashefi, Jack Zheng, Olivier Codol, Jeffrey Weiler, Rhonda Kersten, Paul L. Gribble, Jorn Diedrichsen, Andrew Pruszynski

COSYNE 2025

ePosterNeuroscience

Cognitive maps as expectations learned across episodes – a model of the two dentate gyrus blades

Viktor Studenyak, Jurgen Jost, Christian F. Doeller, Andrej Bicanski

COSYNE 2025

ePosterNeuroscience

Complementary coding of movement, reward expectation and outcome in the cerebellum and Basal Ganglia

Noga Larry, Gil Zur, Mati Joshua
ePosterNeuroscience

Global neuronal population dynamics reflect action-mediated reward expectation

Yangfan Peng, Carl Lindersson, Sasha Tinelli, Jeffery Stedehouder, Charlotte Stagg, Armin Lak, Andrew Sharott

FENS Forum 2024

ePosterNeuroscience

Reward expectation modulates neuronal dynamics and network organization in premotor cortex

Valentina Giuffrida, Isabel Beatrice Marc, Giampiero Bardella, Stefano Ferraina, Pierpaolo Pani

FENS Forum 2024

ePosterNeuroscience

Affective expectations are modulated by the interplay between visceral signals and uncertainty of the sensory environment

Alexandrina Vasilichi, Niia Nikolova, Peter Dayan, Micah Allen

FENS Forum 2024

ePosterNeuroscience

Influence of expectations on pain perception: Evidence for predictive coding

Arthur S. Courtin, Kora Montemagno, Julia Czurylo, Melina Vejlø, Francesca Fardo, Micah Allen

FENS Forum 2024

ePosterNeuroscience

The influence of expectation in sensory attenuation

Gianluigi Giannini, Till Nierhaus, Felix Blankenburg

FENS Forum 2024

ePosterNeuroscience

Forming and updating pain expectations: Influence of sequence volatility and test-retest reliability

Arthur Courtin, Melina Vejlø, Francesca Fardo, Micah G. Allen

FENS Forum 2024

ePosterNeuroscience

Uncertainty in thermosensory expectations enhances an illusion of pain

Jesper Ehmsen, Niia Nikolova, Daniel Christensen, Leah Banellis, Malthe Brændholt, Arthur Courtin, Camilla Krænge, Alexandra Mitchell, Camila Deolindo, Christian Steenkjær, Melina Vejlø, Christoph Mathys, Micah Allen, Francesca Fardo

FENS Forum 2024

ePosterNeuroscience

Probing expectation signals in sensory decision-making using large-scale two-photon imaging

Samuel Picard, The International Brain Laboratory, Gaelle Chapuis, Mayo Faulkner, Michael Krumin, Carolina Quadrado, Bex Terry, Miles Wells, Steven West, Olivier Winter, Matteo Carandini, Kenneth Harris

FENS Forum 2024

ePosterNeuroscience

Whole-brain MRI and single-cell neural resources underlying sensory-driven temporal expectation in mice

Tim Adrian Wendlandt, Patricia Wenk, Julia U. Henschke, Annika Michalek, Toemme Noesselt, Eike Budinger, Janelle Marion Pearl Pakan

FENS Forum 2024

ePosterNeuroscience

The taste of sickness: Induction of negative treatment expectation in an animal model of endotoxin-induced sickness

Kirsten Dombrowski, Lisa Trautmann, Manfred Schedlowski, Harald Engler

FENS Forum 2024

ePosterNeuroscience

Counterfactual outcomes affect reward expectation and prediction errors in macaque frontal cortex

Jan Grohn,Caroline Jahn,Mark Walton,Sebastien Bouret,Jerome Sallet,Nils Kolling

COSYNE 2022

ePosterNeuroscience

Differential encoding of temporal context and expectation across the visual hierarchy

David Wyrick,Hannah Choi,Marina Garrett,Luca Mazzucato,Nicholas Cain,Ryan Larsen,Matthew Valley,Jerome Lecoq

COSYNE 2022

ePosterNeuroscience

Natural scene expectation shapes the structure of trial to trial variability in mid-level visual cortex

Patricia Stan,Matthew Smith

COSYNE 2022

ePosterNeuroscience

Natural scene expectation shapes the structure of trial to trial variability in mid-level visual cortex

Patricia Stan,Matthew Smith

COSYNE 2022

ePosterNeuroscience

Temporal expectations facilitate behaviour in the absence of concomitant spatial expectations and in dynamically unfolding environments

Irene Echeverria-Altuna, Sage E. Boettcher, Anna C. Nobre

expectation coverage

51 items

Seminar29
ePoster22
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