John Moody
Oregon Health & Science University
61 Papers
463 Citations
John Moody is an academic researcher from Oregon Health & Science University. The author has contributed to research in topics: Artificial neural network & Computer science. The author has an hindex of 28, co-authored 61 publications. Previous affiliations of John Moody include Princeton University & University of California, Santa Barbara.
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Papers
Fast learning in networks of locally-tuned processing units
John Moody,Christian J. Darken +1 more
TL;DR: This work proposes a network architecture which uses a single internal layer of locally-tuned processing units to learn both classification tasks and real-valued function approximations (Moody and Darken 1988).
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Learning to trade via direct reinforcement
John Moody,Matthew Saffell +1 more
TL;DR: It is demonstrated how direct reinforcement can be used to optimize risk-adjusted investment returns (including the differential Sharpe ratio), while accounting for the effects of transaction costs.
New macroscopic forces
John Moody,Frank Wilczek +1 more
TL;DR: In this article, the mass and couplings of the invisible axion are derived, followed by suggestions for experiments to detect axions via the macroscopic forces they mediate.
513
Performance functions and reinforcement learning for trading systems and portfolios
TL;DR: This paper proposed to train trading systems and portfolios by optimizing objective functions that directly measure trading and investment performance, such as profit or wealth, economic utility, the Sharpe ratio, and differential Sharpe ratios.
260
Learning rate schedules for faster stochastic gradient search
Christian J. Darken,Joseph T. Chang,John Moody +2 more
- 31 Aug 1992
TL;DR: The authors propose a new methodology for creating the first automatically adapting learning rates that achieve the optimal rate of convergence for stochastic gradient descent, which agrees with theoretical expectations that drift can be used to determine whether the crucial parameter c is large enough.
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