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system to unlock important information from unstructured data sources including X-ray images, surgical and radiology text reports. We will compare prediction models based on existing, routinely collected
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The existing deep learning based time series classification (TSC) algorithms have some success in multivariate time series, their accuracy is not high when we apply them on brain EEG time series (65
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based on available funding. Selection criteria Based on academic achievement. How to apply Can be deferred if the Industry partner agrees. Further information is available on the Engineering Co-operative
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Faculty of IT International Merit Scholarship Sir John Monash Fee Scholarship This scholarship is for international students committed to studying at the Faculty of Information Technology at Monash
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Monash Award Sir John Monash Fee Scholarship The Monash Award is awarded to the highest achieving commencing students. Applications see how to apply Total scholarship value Up to $30,000 Number
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Monash PSA Insurance Medical Science Honours Scholarship The Monash PSA Insurance Bachelor of Medical Science (Honours) Scholarship as funded by the Victorian Medical Insurance Agency Limited is set
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reconstruction and data analysis. The PhD students will be working at Monash Biomedical Imaging and Faculty of Information Technology, Monash University. Monash Biomedical Imaging is one of the most advanced
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A large part of modern life is lived indoors such as in homes, offices, shopping malls, universities, libraries and airports. However, almost all of the existing location-based services (LBS) have
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The world is dynamic, in constant flux. However, machine learning typically learns static models from historical data. As the world changes, these models decline in performance, sometimes
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This PhD project is funded by a successful ARC Discovery Project grant: "Improving human reasoning with causal Bayesian networks: a user-centric, multimodal, interactive approach" and the successful