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FINANCIAL APPLICATIONS OF LEARNING FROM HINTS

Neural Information Processing Systems

In financial market applications, it is typical to have limited amount of relevant training data, with high noise levels in the data. The information content of such data is modest, and while the learning process can try to make the most of what it has, it cannot create new information on its own. This poses a fundamental limitation on the 412 Yaser S. Abu-Mostafa


FINANCIAL APPLICATIONS OF LEARNING FROM HINTS

Neural Information Processing Systems

In financial market applications, it is typical to have limited amount of relevant training data, with high noise levels in the data. The information content of such data is modest, and while the learning process can try to make the most of what it has, it cannot create new information on its own. This poses a fundamental limitation on the 412 Yaser S. Abu-Mostafa


FINANCIAL APPLICATIONS OF LEARNING FROM HINTS

Neural Information Processing Systems

In financial market applications, it is typical to have limited amount of relevant training data, with high noise levels in the data. The information content of such data is modest, and while the learning process can try to make the most of what it has, it cannot create new information on its own. This poses a fundamental limitation on the 412 YaserS.