Convergence of exponentiated gradient algorithms
نویسندگان
چکیده
This paper studies three related algorithms: the (traditional) Gradient Descent (GD) Algorithm, the Exponentiated Gradient Algorithm with Positive and Negative weights (EG algorithm) and the Exponentiated Gradient Algorithm with Unnormalized Positive and Negative weights (EGU algorithm). These algorithms have been previously analyzed using the “mistake-bound framework” in the computational learning theory community. In this paper we perform a traditional signal processing analysis in terms of the mean square error. A relationship between the learning rate and the mean squared error (MSE) of predictions is found for the family of algorithms. This is used to compare the performance of the algorithms by choosing learning rates such that they converge to the same steady state MSE. We demonstrate that if the target weight vector is sparse, the EG algorithm typically converges more quickly than the GD or EGU algorithms which perform very similarly. A side effect of our analysis is a reparametrization of the algorithms that provides insights into their behavior. The general form of the results we obtain are consistent with those obtained in the mistake-bound framework [1]. The application of the algorithms to acoustic echo cancellation is then studied and it is shown in some circumstances that the EG algorithm will converge faster than the other two algorithms. Keywords— Exponentiated Gradient Descent, Learning rate, Mean Squared Error, Echo, Room acoustics, Acoustic echo cancellation.
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ورودعنوان ژورنال:
- IEEE Trans. Signal Processing
دوره 49 شماره
صفحات -
تاریخ انتشار 2001