Computational theories of decision making in the brain usually assume that sensory 'evidence' is accumulated supporting a number of hypotheses, and that the first accumulator to reach threshold triggers a decision in favour of its associated hypothesis. However, the evidence is often assumed to occur as a continuous process whose origins are somewhat abstract, with no direct link to the neural signals - action potentials or 'spikes' - that must ultimately form the substrate for decision making in the brain. Here we introduce a new variant of the well-known multi-hypothesis sequential probability ratio test (MSPRT) for decision making whose evidence observations consist of the basic unit of neural signalling - the inter-spike interval (ISI) ...
A long-standing question in systems neuroscience is how the activity of single neurons gives rise to...
Single-unit animal studies have consistently reported decision-related activitymirroring a process o...
To study a cognitive neural model of decision making, we analyzed the neural and behavioral data rec...
Computational theories of decision making in the brain usually assume that sensory 'evidence' is acc...
Computational theories of decision making in the brain usually assume that sensory 'evi-dence &...
Experimental data indicate that perceptual decision making involves integration of sensory evidence ...
Experimental data indicate that perceptual decision making involves integration of sensory evidence ...
Can decisions be predicted from brain activity? It is frequently difficult in neuroimaging studies t...
Can decisions be predicted from brain activity? It is frequently difficult in neuroimaging studies t...
<div><p>Understanding the cognitive and neural processes that underlie human decision making require...
Optimal binary perceptual decision making requires accumulation of evidence in the form of a probabi...
Understanding the cognitive and neural processes that underlie human decision making requires the su...
Thesis (Ph.D.)--University of Washington, 2014Difficult decisions often require evaluation of sample...
Thesis (Ph.D.)--University of Washington, 2014Difficult decisions often require evaluation of sample...
Temporal spike codes play a crucial role in neural information processing. In particular, there is s...
A long-standing question in systems neuroscience is how the activity of single neurons gives rise to...
Single-unit animal studies have consistently reported decision-related activitymirroring a process o...
To study a cognitive neural model of decision making, we analyzed the neural and behavioral data rec...
Computational theories of decision making in the brain usually assume that sensory 'evidence' is acc...
Computational theories of decision making in the brain usually assume that sensory 'evi-dence &...
Experimental data indicate that perceptual decision making involves integration of sensory evidence ...
Experimental data indicate that perceptual decision making involves integration of sensory evidence ...
Can decisions be predicted from brain activity? It is frequently difficult in neuroimaging studies t...
Can decisions be predicted from brain activity? It is frequently difficult in neuroimaging studies t...
<div><p>Understanding the cognitive and neural processes that underlie human decision making require...
Optimal binary perceptual decision making requires accumulation of evidence in the form of a probabi...
Understanding the cognitive and neural processes that underlie human decision making requires the su...
Thesis (Ph.D.)--University of Washington, 2014Difficult decisions often require evaluation of sample...
Thesis (Ph.D.)--University of Washington, 2014Difficult decisions often require evaluation of sample...
Temporal spike codes play a crucial role in neural information processing. In particular, there is s...
A long-standing question in systems neuroscience is how the activity of single neurons gives rise to...
Single-unit animal studies have consistently reported decision-related activitymirroring a process o...
To study a cognitive neural model of decision making, we analyzed the neural and behavioral data rec...