Towards algorithmic analytics for large-scale datasets
The traditional goal of quantitative analytics is to find simple, transparent models that generate explainable insights. In recent years, large-scale data acquisition enabled, for instance, by brain scanning and genomic profiling with microarray-type techniques, has prompted a wave of statistical in...
Main Authors: | Bzdok, D, Nichols, T, Smith, S |
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Format: | Journal article |
Language: | English |
Published: |
Nature
2019
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