CG数据库 >> Linear Methods for Optimization and Prediction in Healthcare

Linear Methods for Optimization and Prediction in HealthcareMP4 | Video: AVC 1920x1080 | Audio: AAC 48KHz 2ch | Duration: 2 Hours | 4.13 GBGenre: eLearning | Language: EnglishLinear methods have traditionally been the workhorse of data analysis in many domains, and health-related applications are no exception.

However, linear methods have a lot more to offer than standard regression analysis.

This video explains why linear thinking remains a powerful and sophisticated way to think about data for prediction, causal analysis, and optimization in health tech.

Designed for data scientists and for data savvy health care managers and clinicians, it demonstrates how to strengthen the conclusions you draw from health-related data and how to better allocate your health care resources.

Examples are demonstrated in R and Python.

Learners should understand the statistical limitations on extrapolating about groups and about the future based on limited sample size.

They should also understand what it means to overfit a model and how to avoid doing so.

Understand how to make causal inferences in health data using R and PythonExplore techniques for assessing the strength of those causal inferencesDiscover methods for predicting population-level health parameters and individual outcomesLearn how to apply linear methods for health-related resource allocations


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发布日期: 2017-11-13