← Back

Mutual Information

Topic spotlight
TopicWorld Wide

mutual information

Discover seminars, jobs, and research tagged with mutual information across World Wide.
3 curated items2 Seminars1 ePoster
Updated about 4 years ago
3 items · mutual information
3 results
SeminarNeuroscience

The bounded rationality of probability distortion

Laurence T Maloney
NYU
Nov 9, 2021

In decision-making under risk (DMR) participants' choices are based on probability values systematically different from those that are objectively correct. Similar systematic distortions are found in tasks involving relative frequency judgments (JRF). These distortions limit performance in a wide variety of tasks and an evident question is, why do we systematically fail in our use of probability and relative frequency information? We propose a Bounded Log-Odds Model (BLO) of probability and relative frequency distortion based on three assumptions: (1) log-odds: probability and relative frequency are mapped to an internal log-odds scale, (2) boundedness: the range of representations of probability and relative frequency are bounded and the bounds change dynamically with task, and (3) variance compensation: the mapping compensates in part for uncertainty in probability and relative frequency values. We compared human performance in both DMR and JRF tasks to the predictions of the BLO model as well as eleven alternative models each missing one or more of the underlying BLO assumptions (factorial model comparison). The BLO model and its assumptions proved to be superior to any of the alternatives. In a separate analysis, we found that BLO accounts for individual participants’ data better than any previous model in the DMR literature. We also found that, subject to the boundedness limitation, participants’ choice of distortion approximately maximized the mutual information between objective task-relevant values and internal values, a form of bounded rationality.

SeminarNeuroscienceRecording

How single neuron dynamics influence network activity and behaviour

Fleur Zeldenrust
Donders Institute for Brain, Cognition and Behaviour
Jun 1, 2021

To understand how the brain can perform complex tasks such as perception, we have to understand how information enters the brain, how it is transformed and how it is transferred. But, how do we measure information transfer in the brain? This presentation will start with a general introduction of what mutual information is and how to measure it in an experimental setup. Next, the talk will focus on how this can be used to develop brain models at different (spatial) levels, from the microscopic single neuron level to the macroscopic network and behavioural level. How can we incorporate the knowledge about single neurons, that already show complex dynamics, into network activity and link this to behaviour?

ePoster

Mutual information manifold inference for studying neural population dynamics

Michael Kareithi, Pier Luigi Dragotti, Simon R. Schultz

FENS Forum 2024