Available observation time regulates optimal balance between sensitivity and confidence
Sahel Azizpour, Viola Priesemann, Johannes Zierenberg, Anna Levina

TL;DR
This paper investigates how limited observation time affects the ability of neural systems to distinguish inputs, revealing that optimal sensitivity depends on available time and shifts from critical to subcritical regimes.
Contribution
It introduces measures for input distinction under finite observation times and demonstrates how optimal neural tuning depends on observation duration, emphasizing the importance of finite time considerations.
Findings
Response variance increases with temporal correlations under limited observation.
Optimal neural tuning depends on observation time, favoring subcritical regimes.
Finite observation times significantly impact information processing capabilities.
Abstract
Tasks that require information about the world imply a trade-off between the time spent on observation and the variance of the response. In particular, fast decisions need to rely on uncertain information. However, standard estimates of information processing capabilities, such as the dynamic range, are defined based on mean values that assume infinite observation times. Here, we show that limiting the observation time results in distributions of responses whose variance increases with the temporal correlations in a system and, importantly, affects a system's confidence in distinguishing inputs and thereby making decisions. To quantify the ability to distinguish features of an input, we propose several measures and demonstrate them on the prime example of a recurrent neural network that represents an input rate by a response firing averaged over a finite observation time. We show…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · Advanced Memory and Neural Computing
