57 research outputs found
Priming and the mechanisms of attention
SIGLELD:D49870/84 / BLDSC - British Library Document Supply CentreGBUnited Kingdo
Assessing the potential of artificial intelligence for prostate MRI in a diverse multi-centre diagnostic population
Evolution of Reinforcement Learning in Uncertain Environments: Emergence of Risk-Aversion and Matching
Reinforcement learning (RL) is a fundamental process by which organisms learn to achieve a goal from interactions with the environment. We use Artificial Life techniques to derive (near-)optimal neuronal learning rules in a simple neural network model of decision-making in simulated bumblebees foraging for nectar. The resulting networks exhibit efficient RL, allowing the bees to respond rapidly to changes in reward contingencies. Furthermore, the evolved synaptic plasticity dynamics give rise to varying exploration/exploitation levels from which emerge the well-documented foraging strategies of risk aversion and probability matching. These are shown to be a direct result of optimal RL, providing a biologically founded, parsimonious and novel explanation for these behaviors. Our results are corroborated by a rigorous mathematical analysis and by experiments in mobile robots
841P IGM-2323 is a CD20xCD3 IgM bispecific T-cell engager that kills low CD20-expressing and rituximab-resistant B-cell lymphomas
The systematic position of Antirrhea and Caerois, with comments on the classification of the Nymphalidae (Lepidoptera)
Work variables, non-work variables and quality of work life: The Malaysia hotel executives’ insights
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