4.7 Article

Artificial intelligence in science: An emerging general method of invention

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Summary: The transformational machine learning (TML) method, which transforms features by training ML models on other tasks, significantly improves predictive performance across various domains of machine learning. The TML features generally outperform intrinsic features, leading to enhanced scientific understanding and ecosystem-based approach to ML.

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