开源软件名称(OpenSource Name):HealthCatalyst/healthcareai-r开源软件地址(OpenSource Url):https://github.com/HealthCatalyst/healthcareai-r开源编程语言(OpenSource Language):R 99.9%开源软件介绍(OpenSource Introduction):healthcareaiOverviewThe aim of
Usage
models <- machine_learn(pima_diabetes, patient_id, outcome = diabetes)
models
# > Algorithms Trained: Random Forest, eXtreme Gradient Boosting, and glmnet
# > Model Name: diabetes
# > Target: diabetes
# > Class: Classification
# > Performance Metric: AUROC
# > Number of Observations: 768
# > Number of Features: 12
# > Models Trained: 2018-09-01 18:19:44
# >
# > Models tuned via 5-fold cross validation over 10 combinations of hyperparameter values.
# > Best model: Random Forest
# > AUPR = 0.71, AUROC = 0.84
# > Optimal hyperparameter values:
# > mtry = 2
# > splitrule = extratrees
# > min.node.size = 12 Make predictions and examine predictive performance: predictions <- predict(models, outcome_groups = TRUE)
plot(predictions) Learn MoreFor details on what’s happening under the hood and for options to
customize data preparation and model training, see Getting Started with
healthcareai
as well as the helpfiles for individual functions such as
Documentation of all functions as well as vignettes on various uses of the package are available at the package website: https://docs.healthcare.ai/. Also, be sure to read our blog and watch our broadcasts to learn more about what’s new in healthcare machine learning and how we are using this toolkit to put machine learning to work in real healthcare systems. Get InvolvedWe have a Slack community that is a great place to introduce yourself, share what you’re doing with the package, ask questions, and troubleshoot your code. ContributingIf you are interested in contributing the package (great!), please read the contributing guide, and look for issues with the “help wanted” tag. Feel free to tackle any issue that interests you; those are a few issues that we feel would make a good place to start. FeedbackYour feedback is hugely appreciated. It is makes the package work well and helps us make it more useful to the community. Both feature requests and bug reports should be submitted as Github issues. Bug reports should be filed with a minimal reproducable
example. The reprex
package is extraordinarily helpful
for this. Please also include the output of LegacyVersion 1 of For an example of how to adapt v1 models to the v2 API, check out the Transitioning vignettes. |
2023-10-27
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