Model Compression for Domain Adaptation through Causal Effect Estimation
Recent improvements in the predictive quality of natural language processing systems are often dependent on a substantial increase in the number of model parameters. This has led to various attempts of compressing such models, but existing methods have not considered the differences in the predictiv...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
18.01.2021
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Subjects | |
Online Access | Get full text |
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Summary: | Recent improvements in the predictive quality of natural language processing
systems are often dependent on a substantial increase in the number of model
parameters. This has led to various attempts of compressing such models, but
existing methods have not considered the differences in the predictive power of
various model components or in the generalizability of the compressed models.
To understand the connection between model compression and out-of-distribution
generalization, we define the task of compressing language representation
models such that they perform best in a domain adaptation setting. We choose to
address this problem from a causal perspective, attempting to estimate the
average treatment effect (ATE) of a model component, such as a single layer, on
the model's predictions. Our proposed ATE-guided Model Compression scheme
(AMoC), generates many model candidates, differing by the model components that
were removed. Then, we select the best candidate through a stepwise regression
model that utilizes the ATE to predict the expected performance on the target
domain. AMoC outperforms strong baselines on dozens of domain pairs across
three text classification and sequence tagging tasks. |
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DOI: | 10.48550/arxiv.2101.07086 |