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IBM Journal of Research and Development 
Volume 47, Number 1, 2003
Mathematical Sciences at 40
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Data-intensive analytics for predictive modeling - References

by C. V. Apte, S. J. Hong, R. Natarajan, E. P. D. Pednault, F. A. Tipu, and S. M. Weiss

References

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