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Machine learning and deep learning 원문보기

Electronic markets, v.31 no.3, 2021년, pp.685 - 695  

Janiesch, Christian ,  Zschech, Patrick ,  Heinrich, Kai

Abstract AI-Helper 아이콘AI-Helper

AbstractToday, intelligent systems that offer artificial intelligence capabilities often rely on machine learning. Machine learning describes the capacity of systems to learn from problem-specific training data to automate the process of analytical model building and solve associated tasks. Deep lea...

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