双稳健

来自集智百科 - 复杂系统|人工智能|复杂科学|复杂网络|自组织
我是猫讨论 | 贡献2022年6月29日 (三) 10:31的版本 (建立内容为“Inverse probability weighting '''Inverse probability weighting''' is a statistical technique for calculating statistics standardized to a pseudo-population diffe…”的新页面)
(差异) ←上一版本 | 最后版本 (差异) | 下一版本→ (差异)
跳到导航 跳到搜索

Inverse probability weighting

Inverse probability weighting is a statistical technique for calculating statistics standardized to a pseudo-population different from that in which the data was collected. Study designs with a disparate sampling population and population of target inference (target population) are common in application. There may be prohibitive factors barring researchers from directly sampling from the target population such as cost, time, or ethical concerns. A solution to this problem is to use an alternate design strategy, e.g. stratified sampling. Weighting, when correctly applied, can potentially improve the efficiency and reduce the bias of unweighted estimators.

One very early weighted estimator is the Horvitz–Thompson estimator of the mean. When the sampling probability is known, from which the sampling population is drawn from the target population, then the inverse of this probability is used to weight the observations. This approach has been generalized to many aspects of statistics under various frameworks. In particular, there are weighted likelihoods, weighted estimating equations, and weighted probability densities from which a majority of statistics are derived. These applications codified the theory of other statistics and estimators such as marginal structural models, the standardized mortality ratio, and the EM algorithm for coarsened or aggregate data.

Inverse probability weighting is also used to account for missing data when subjects with missing data cannot be included in the primary analysis. With an estimate of the sampling probability, or the probability that the factor would be measured in another measurement, inverse probability weighting can be used to inflate the weight for subjects who are under-represented due to a large degree of missing data.


Inverse Probability Weighted Estimator (IPWE)

The inverse probability weighting estimator can be used to demonstrate causality when the researcher cannot conduct a controlled experiment but has observed data to model. Because it is assumed that the treatment is not randomly assigned, the goal is to estimate the counterfactual or potential outcome if all subjects in population were assigned either treatment.

Suppose observed data are Wiki-IPWE-Figure1.png  drawn i.i.d (independent and identically distributed) from unknown distribution P, where

  • Wiki-IPWE-Figure2.png covariates
  • Wiki-IPWE-Figure3.png are the two possible treatments.
  • Wiki-IPWE-Figure4.pngresponse
  • We do not assume treatment is randomly assigned.

The goal is to estimate the potential outcome,Wiki-IPWE-Figure5.png , that would be observed if the subject were assigned treatment . Then compare the mean outcome if all patients in the population were assigned either treatment:Wiki-IPWE-Figure6.png . We want to estimate  using observed data Wiki-IPWE-Figure1.png.

Estimator Formula[edit]

公式1.png


Constructing the IPWE[edit]

  1. Wiki-IPWE-Figure7.pngwhere Wiki-IPWE-Figure8.png
  2. construct Wiki-IPWE-Figure9.png or Wiki-IPWE-Figure10.png using any propensity model (often a logistic regression model)
  3. Wiki-IPWE-Figure11.png

With the mean of each treatment group computed, a statistical t-test or ANOVA test can be used to judge difference between group means and determine statistical significance of treatment effect.

Assumptions[edit]

Recall the joint probability model (X,A,Y)~P for the covariate X , action A, and response Y. If  X and  A are known as x and a, respectively, then the response Y(X=x,A=a)=Y(x=a)has the distribution

Wiki-IPWE-Figure13.png

We make the following assumptions.

  • (A1) Consistency: Y=Y*(A)
  • (A2) No unmeasured confounders:Wiki-IPWE-Figure14.png . More formally, for each bounded and measurable functions  and , Wiki-IPWE-Figure15.png This means that treatment assignment is based solely on covariate data and independent of potential outcomes.
  • (A3) Positivity:  Wiki-IPWE-Figure16.pngfor all  a and x.

Formal derivation[edit]

Under the assumptions (A1)-(A3), we will derive the following identities

Wiki-IPWE-Figure17.png

The first equality follows from the definition and (A1). For the second equality, first use the iterated expectation to write

Wiki-IPWE-Figure18.pngBy (A3), Wiki-IPWE-Figure19.png almost surely. Then using (A2), note that

Wiki-IPWE-Figure20.pngHence integrating out the last expression with respect to  and noting that Wiki-IPWE-Figure18.png almost surely, the second equality in  follows.

Limitations[edit]

The Inverse Probability Weighted Estimator (IPWE) can be unstable if estimated propensities are small. If the probability of either treatment assignment is small, then the logistic regression model can become unstable around the tails causing the IPWE to also be less stable.

Augmented Inverse Probability Weighted Estimator (AIPWE)

An alternative estimator is the augmented inverse probability weighted estimator (AIPWE) combines both the properties of the regression based estimator and the inverse probability weighted estimator. It is therefore a 'doubly robust' method in that it only requires either the propensity or outcome model to be correctly specified but not both. This method augments the IPWE to reduce variability and improve estimate efficiency. This model holds the same assumptions as the Inverse Probability Weighted Estimator (IPWE).

Estimator Formula

With the following notations:

  1. is an indicator function if subject i is part of treatment group a (or not).
  2. Construct regression estimator  to predict outcome  based on covariates  and treatment , for some subject i. For example, using ordinary least squares regression.
  3. Construct propensity (probability) estimate . For example, using logistic regression.
  4. Combine in AIPWE to obtain

Interpretation and "double robustness"

The later rearrangement of the formula helps reveal the underlying idea: our estimator is based on the average predicted outcome using the model (i.e.: ). However, if the model is biased, then the residuals of the model will not be (in the full treatment group a) around 0. We can correct this potential bias by adding the extra term of the average residuals of the model (Q) from the true value of the outcome (Y) (i.e.: ). Because we have missing values of Y, we give weights to inflate the relative importance of each residual (these weights are based on the inverse propensity, a.k.a. probability, of seeing each subject observations) (see page 10 in ).

The "doubly robust" benefit of such an estimator comes from the fact that it's sufficient for one of the two models to be correctly specified, for the estimator to be unbiased (either  or , or both). This is because if the outcome model is well specified then its residuals will be around 0 (regardless of the weights each residual will get). While if the model is biased, but the weighting model is well specified, then the bias will be well estimated (And corrected for) by the weighted average residuals.

The bias of the doubly robust estimators is called a second-order bias, and it depends on the product of the difference  and the difference . This property allows us, when having a "large enough" sample size, to lower the overall bias of doubly robust estimators by using machine learning estimators (instead of parametric models).

参考文献