Many of the scientific questions we're interested in tackling require studying learning over long periods of time across the brain. This is challenging – which is why we're excited to say we've been developing a system for chronic wireless recording using long Neuropixels probes in macaque monkeys.
New ManyBabies publication!
Over 10+ years and 5,000+ babies tested, we've learned a ton about how to study the developing mind. In this comment, we discuss three such lessons that are shaping the future of ManyBabies. We'd love to hear your thoughts!
Homeward bound! After a successful postdoc at Penn State, I'm thrilled to be heading back to Canada to join the University of Guelph faculty in neuroscience and applied cognitive sciences. Bring on the next chapter!
A decade of ManyBabies research, testing thousands of babies across hundreds of labs, has shown that some, but not all findings in infant research replicate well. Collectively, these projects have sho...
Natural behavior unfolds as a continuous stream of actions. Because these actions often occur in rapid succession, the brain must prepare multiple future actions while the current action is being executed. Our TICS piece explores how this works.
www.sciencedirect.com/science/arti...
This thing going around about intrinsic “turn left” bias in humans (punished in Nature Communications!), controlled for hand, foot, and eye dominance, and tested in right-side and left-side driving countries, is interesting but…boy Idk. “Intrinsic” is a bold claim
www.nature.com/articles/s41...
Jonathan A. Michaels
ManyBabies
Continuous Strategy Adaptation and Discrete Switching Driven by Environment and Internal State in Meta-Learning bioRxivpreprint
Human learning of noninvasive brain–computer interfaces via manifold geometry
Erica L. Busch, E. Chandra Fincke, Guillaume Lajoie, Smita Krishnaswamy & Nicholas B. Turk-Browne
www.nature.com/articles/s41...
The Naturalistic Cognitive Computational Neuroscience Lab is launching at UT Austin and is looking for founding members at all levels, including lab manager, PhD students, and postdocs! #NeuroJobs
We will study human brain🧠 and memory & attention, using fMRI and modeling.
thesonglab.github.io
I've always wondered what possible reason my kids cared if i was holding them while seated or while standing.
Well, babies fall asleep faster when you walk while holding them. A 2022 study suggests this “transport response” may have evolved to keep babies quiet if a caregiver is fleeing a predator.
www.sciencedirect.com
Counterclockwise motion has been documented in human gatherings. The authors show across five experiments in Spain and Japan that this bias reflects individual locomotor tendencies.
Behavioral strategies can change in response to environmental and internal states, either gradually or abruptly, enabling flexible adaptation. Such strategy regulation is central to meta-learning, the ability to learn to learn. Previous studies analyzed temporal or condition-dependent strategy change using models and theories that assume continuous or discrete changes. Here, we analyze the mice's behavior in a two-step decision task using four different approaches: stay-switch choice probability analysis; generalized linear mixed model (GLMM) of choice and reaction time (RT) given preceding task events; fitting a reinforcement learning (RL) model with time-varying meta-parameter by a novel multiple-step particle filtering method; and fitting a finite internal state (FIS) model that produces choice and RT depending on discrete state transition. Together, the stay probability and GLMM analyses reveal that learning progress encourages a shift toward a model-based, value-based learning strategy, accompanied by elevated choice perseveration. More uncertain reward settings or changes in them lead to random, exploratory behavior. Meta-parameter dynamics show faster learning, greater involvement of a model-based strategy, higher choice stochasticity, and more rapid development of choice perseveration with less contribution to the final decision as learning progresses. Exploratory behavior in the face of uncertain reward settings or changes in those settings is underpinned by slower forgetting and greater model-based contribution. FIS modeling discovered a trial-level switch between an optimal value-based learning state and a suboptimal self-repeating state. Meta-parameter dynamics reflect continuous strategy changes, while state transitions capture abrupt, discrete strategy switches. At an intermediate timescale, when reward settings change, two processes interact: mice persist in a self-repeating state, leading to attempts at model-based strategy with incomplete adaptation.
Busch et al. use nonlinear neural manifolds to help humans gain rapid control over a noninvasive brain–computer interface, allowing them to learn how to play a video game with real-time fMRI neurofeed...
Approximately 20%–30% of infants cry excessively and exhibit sleep difficulties for no apparent reason, causing parental stress and even triggering im…
We started studying sequence learning by looking into how a fixed sequence is learned. However, in real life, the problem for the brain is to put together flexible sequences on the fly - which provides a completely new perspective:
www.sciencedirect.com/science/arti...
With @andpru.bsky.social