Likelihood-Based Data Squashing: A Modeling Approach to Instance Construction

作者:David Madigan, Nandini Raghavan, William Dumouchel, Martha Nason, Christian Posse, Greg Ridgeway

摘要

Squashing is a lossy data compression technique that preserves statistical information. Specifically, squashing compresses a massive dataset to a much smaller one so that outputs from statistical analyses carried out on the smaller (squashed) dataset reproduce outputs from the same statistical analyses carried out on the original dataset. Likelihood-based data squashing (LDS) differs from a previously published squashing algorithm insofar as it uses a statistical model to squash the data. The results show that LDS provides excellent squashing performance even when the target statistical analysis departs from the model used to squash the data.

论文关键词:instance construction, data compression

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论文官网地址:https://doi.org/10.1023/A:1014095614948