/hivemall

Scalable machine learning library for Hive/Hadoop

Primary LanguageJavaApache License 2.0Apache-2.0

Hivemall: Hive scalable machine learning library

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Hivemall is a scalable machine learning library that runs on Apache Hive. Hivemall is designed to be scalable to the number of training instances as well as the number of training features.

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Supported Algorithms

Hivemall provides machine learning functionality as well as feature engineering functions through UDFs/UDAFs/UDTFs of Hive.

Binary Classfication

  • Perceptron

  • Passive Aggressive (PA, PA1, PA2)

  • Confidence Weighted (CW)

  • Adaptive Regularization of Weight Vectors (AROW)

  • Soft Confidence Weighted (SCW1, SCW2)

  • AdaGradRDA (w/ hinge loss)

  • Factorization Machine (w/ logistic loss)

My recommendation is AROW, SCW1, AdaGradRDA, and Factorization Machine while it depends.

Multi-class Classfication

  • Perceptron

  • Passive Aggressive (PA, PA1, PA2)

  • Confidence Weighted (CW)

  • Adaptive Regularization of Weight Vectors (AROW)

  • Soft Confidence Weighted (SCW1, SCW2)

  • Gradient Tree Boosting (Experimental)

My recommendation is AROW and SCW while it depends.

Regression

My recommendation for is AROW regression, AdaDelta, and Factorization Machine while it depends.

Recommendation

k-Nearest Neighbor

  • Minhash (LSH with jaccard index)

  • b-Bit minhash

  • Brute-force search using Cosine similarity

Anomaly Detection

Feature engineering

System requirements

  • Hive 0.11 or later

Basic Usage

Hivemall

Find more examples on our wiki page and find a brief introduction to Hivemall in this slide.

Copyright

Copyright (C) 2015 Makoto YUI
Copyright (C) 2013-2015 National Institute of Advanced Industrial Science and Technology (AIST)  

Put the above copyrights for the services/softwares that use Hivemall.

Support

Support is through the issue list, not by a direct e-mail.

References

Please refer the following paper for research uses:

Awards

Acknowledgment

This work was supported in part by a JSPS grant-in-aid for young scientists (B) #24700111 and a JSPS grant-in-aid for scientific research (A) #24240015.

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