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Andrei Rusu

Researcher at West University of Timișoara

Publications -  64
Citations -  34789

Andrei Rusu is an academic researcher from West University of Timișoara. The author has contributed to research in topics: Reinforcement learning & Meta learning (computer science). The author has an hindex of 25, co-authored 61 publications receiving 23267 citations. Previous affiliations of Andrei Rusu include Technical University of Cluj-Napoca & Ovidius University.

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Personality predictors of speeding: Anger-Aggression and Impulsive-Sensation Seeking. A systematic review and meta-analysis.

TL;DR: Overall, the results confirm Speeding's associations with both hypothesized most important predictors, but at a low magnitude, compared with the associations for general population and young drivers.
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Identified and engaged: A multi-level dynamic model of identification with the group and performance in collaborative learning

TL;DR: In this paper, a dynamic and multi-level perspective on identification with the group was explored, and the extent to which core self-evaluations, study engagement, group development, and relationship conflict influence identification with groups was explored.
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Psychometric Properties of the Romanian Version of Experiences in Close Relationships-revised Questionnaire (ECR-R)☆

TL;DR: In this article, the authors investigated the psychometric properties of the Romanian version of the Experience in Close Relationships-Revised questionnaire (ECR-R; Fraley, Waller & Brennan, 2000).
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Core self-evaluations, job search behaviour and health complaints: The mediating role of job search self-efficacy

TL;DR: In this paper, the role played by core self-evaluations (CSEs) in relationship to both job seekers' job search behaviour and health complaints by examining the mediating role of job search self-efficacy (JSSE).
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Meta-Learning by the Baldwin Effect

TL;DR: This paper showed that the Baldwin effect is capable of evolving few-shot supervised and reinforcement learning mechanisms, by shaping the hyperparameters and the initial parameters of deep learning algorithms, which can genetically accommodate strong learning biases on the same set of problems as a recent machine learning algorithm called MAML "Model Agnostic Meta-Learning".