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depscope/conda/r-lmtp

r-lmtp

condav1.5.3

Non-parametric estimators for casual effects based on longitudinal modified treatment policies as described in Diaz, Williams, Hoffman, and Schenck <doi:10.1080/01621459.2021.1955691>, traditional point treatment, and traditional longitudinal effects. Continuous, binary, categorical treatments, and multivariate treatments are allowed as well are censored outcomes. The treatment mechanism is estimated via a density ratio classification procedure irrespective of treatment variable type. For both continuous and binary outcomes, additive treatment effects can be calculated and relative risks and odds ratios may be calculated for binary outcomes.

License AGPL-3.0-only4 versions1 maintainers0 deps88 weekly dl
nt-williams/lmtp
44
/ 100
Health
safe to use

[email protected] is safe to use (health: 44/100)

Health breakdown0 – 100
10/25
maintenance
0/20
popularity
25/25
security
6/15
maturity
3/15
community
Vulnerabilities
0
none known

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First published · 2024-12-04 19:35:38.575000+00:00

Last updated · 2025-09-20 21:12:52.709000+00:00

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