Title
BoostClean: Automated Error Detection and Repair for Machine Learning.
Abstract
Predictive models based on machine learning can be highly sensitive to data error. Training data are often combined with a variety of different sources, each susceptible to different types of inconsistencies, and new data streams during prediction time, the model may encounter previously unseen inconsistencies. An important class of such inconsistencies is domain value violations that occur when an attribute value is outside of an allowed domain. We explore automatically detecting and repairing such violations by leveraging the often available clean test labels to determine whether a given detection and repair combination will improve model accuracy. We present BoostClean which automatically selects an ensemble of error detection and repair combinations using statistical boosting. BoostClean selects this ensemble from an extensible library that is pre-populated general detection functions, including a novel detector based on the Word2Vec deep learning model, which detects errors across a diverse set of domains. Our evaluation on a collection of 12 datasets from Kaggle, the UCI repository, real-world data analyses, and production datasets that show that Boost- Clean can increase absolute prediction accuracy by up to 9% over the best non-ensembled alternatives. Our optimizations including parallelism, materialization, and indexing techniques show a 22.2x end-to-end speedup on a 16-core machine.
Year
Venue
Field
2017
arXiv: Databases
Data mining,Data stream mining,Computer science,Search engine indexing,Error detection and correction,Boosting (machine learning),Artificial intelligence,Deep learning,Word2vec,Detector,Machine learning,Speedup
DocType
Volume
Citations 
Journal
abs/1711.01299
5
PageRank 
References 
Authors
0.40
32
4
Name
Order
Citations
PageRank
S. Krishnan139136.25
Michael J. Franklin2174231681.10
Ken Goldberg33785369.80
Eugene Wu469145.52