WARM START GENERALIZED ADDITIVE MIXED-EFFECT (GAME) FRAMEWORK

user-5d4bc4a8530c70a9b361c870(2020)

Cited 0|Views26
No score
Abstract
In an example embodiment, a warm-start training solution is used to dramatically reduce the computational resources needed to train when retraining a generalized additive mixed-effect (GAME) model. The problem of retraining time is particularly applicable to GAME models, since these models take much longer to train as the data grows. In the past, the strategy to reduce computational resources during retraining was to use less training data, but this affects the model quality, especially for GAME models, which rely on fine-grained sub-models at, for example, member or item levels. The present solution addresses the computational resources issues without sacrificing GAME model accuracy.
More
Translated text
Key words
Retraining,Operations research,Computer science,Training (meteorology),Game models,Mixed effects,Model quality,Training set,Warm start
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined