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2 projects in result set.
Analysis of Count Time Series - R package which provides likelihood-based methods for model fitting and assessment, prediction and intervention analysis of count time series following generalized linear models.
Tags: time series, autocorrelation, break detection, change detection, regression, count data

Activity Percentile: 0
Activity Ranking: 0
Registered: 2013-04-04 13:48

lethal - Compute lethal doses for count data based on generalized additive models (GAMs) together with parametric bootstrap confidence intervals for the lethal dose. For a current development version see https://github.com/hofnerb/lethal
Tags: dose finding, generalized additive models, GAM, count data

Activity Percentile: 0
Activity Ranking: 0
Registered: 2014-02-28 13:11

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