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attentional sampling in focused and divided attention in a series of experiments using a combination of electroencephalographic (EEG) recordings of frequency-tagged steady-state visual evoked potentials and
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. This project aims to develop a color representation in which the distance between hues accurately reflects the effectiveness of attentional selection between them. In a series of experiments using
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financially supported by the VILLUM Synergy project entitled ReBatMan: A New Paradigm for Sustainable Battery Lifetime Prediction through Acoustic Sensing and Machine Learning. The project is headed by Assoc
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attentional sampling in focused and divided attention in a series of experiments using a combination of electroencephalographic (EEG) recordings of frequency-tagged steady-state visual evoked potentials and
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reflects selective attention. This project aims to develop a color representation in which the distance between hues accurately reflects the effectiveness of attentional selection between them. In a series
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subsequently be forwarded to the Head of Department who will assemble an appointment committee. The appointment committee will manage and complete a series of job interviews with especially promising applicants
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of glacier dynamics and present-day ice variability. Your tasks are flexible, but could include: Analyze time series of surface elevations. Analyze time series of ice speed. Analyze time series of climate data
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into advanced time series analysis to decipher the seasonal signal and noise profiles of the GNSS time series. Responsibilities and qualifications Your primary tasks will be to perform original research that aims
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] Subject Areas: Statistics, Probability, OR, Actuarial and Financial Math Appl Deadline: 2025/11/15 11:59PM (posted 2025/08/16, updated 2025/08/11) Position Description: Apply Position Description
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learning on graphs, including knowledge graphs, social and biological networks, financial networks, temporal and dynamic graphs, uncertain graphs, explainability and fairness of deep learning methods