Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Causal inference by using invariant prediction: identification and confidence intervals
by
Meinshausen, Nicolai
, Peters, Jonas
, Bühlmann, Peter
in
Causal discovery
/ Causal inference
/ Causal models
/ Causality
/ confidence interval
/ Confidence intervals
/ data collection
/ equations
/ Experiments
/ genes
/ Inference
/ Intervention
/ Invariance
/ Invariant prediction
/ Invariants
/ Mathematical analysis
/ Mathematical models
/ Perturbation methods
/ prediction
/ Predictions
/ Property
/ Robustness
/ Statistics
/ Structural equation modeling
/ Structural models
/ Studies
/ Variables
2016
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Causal inference by using invariant prediction: identification and confidence intervals
by
Meinshausen, Nicolai
, Peters, Jonas
, Bühlmann, Peter
in
Causal discovery
/ Causal inference
/ Causal models
/ Causality
/ confidence interval
/ Confidence intervals
/ data collection
/ equations
/ Experiments
/ genes
/ Inference
/ Intervention
/ Invariance
/ Invariant prediction
/ Invariants
/ Mathematical analysis
/ Mathematical models
/ Perturbation methods
/ prediction
/ Predictions
/ Property
/ Robustness
/ Statistics
/ Structural equation modeling
/ Structural models
/ Studies
/ Variables
2016
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Causal inference by using invariant prediction: identification and confidence intervals
by
Meinshausen, Nicolai
, Peters, Jonas
, Bühlmann, Peter
in
Causal discovery
/ Causal inference
/ Causal models
/ Causality
/ confidence interval
/ Confidence intervals
/ data collection
/ equations
/ Experiments
/ genes
/ Inference
/ Intervention
/ Invariance
/ Invariant prediction
/ Invariants
/ Mathematical analysis
/ Mathematical models
/ Perturbation methods
/ prediction
/ Predictions
/ Property
/ Robustness
/ Statistics
/ Structural equation modeling
/ Structural models
/ Studies
/ Variables
2016
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Causal inference by using invariant prediction: identification and confidence intervals
Journal Article
Causal inference by using invariant prediction: identification and confidence intervals
2016
Request Book From Autostore
and Choose the Collection Method
Overview
What is the difference between a prediction that is made with a causal model and that with a non-causal model? Suppose that we intervene on the predictor variables or change the whole environment. The predictions from a causal model will in general work as well under interventions as for observational data. In contrast, predictions from a non-causal model can potentially be very wrong if we actively intervene on variables. Here, we propose to exploit this invariance of a prediction under a causal model for causal inference: given different experimental settings (e.g. various interventions) we collect all models that do show invariance in their predictive accuracy across settings and interventions. The causal model will be a member of this set of models with high probability. This approach yields valid confidence intervals for the causal relationships in quite general scenarios. We examine the example of structural equation models in more detail and provide sufficient assumptions under which the set of causal predictors becomes identifiable. We further investigate robustness properties of our approach under model misspecification and discuss possible extensions. The empirical properties are studied for various data sets, including large-scale gene perturbation experiments.
Publisher
Blackwell Publishing Ltd,John Wiley & Sons Ltd,Oxford University Press
Subject
This website uses cookies to ensure you get the best experience on our website.