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"path": "/t/rms-semiparametric-ordinal-longitudinal-model/4819?page=6#post_113",
"publishedAt": "2026-02-16T12:56:19.000Z",
"site": "https://discourse.datamethods.org",
"textContent": "ATE will result in an estimate that not only may not apply to anyone in the sample but may not apply to anyone in an entire population. Example: suppose sex is the only important covariate and that it is very important. Marginalizing over sex will result in an estimate that is between that for females and that for males, and hides the important sex effect. Depersonalized medicine.",
"title": "RMS Semiparametric Ordinal Longitudinal Model"
}