Online linear optimization with the log-determinant regularizer
Ken-ichiro Moridomi, Kohei Hatano, Eiji Takimoto

TL;DR
This paper introduces a novel online optimization algorithm using log-determinant regularization for positive semi-definite matrices, achieving optimal performance especially with sparse loss matrices, and extends the approach to vector cases.
Contribution
It develops a new performance analysis technique exploiting strong convexity of the log-determinant, improving bounds over previous norm-based methods, and applies to online collaborative filtering.
Findings
Log-determinant regularization outperforms other regularizers with sparse losses.
Achieves optimal guarantees in online collaborative filtering.
Extends the method to vector online optimization with Burg entropy.
Abstract
We consider online linear optimization over symmetric positive semi-definite matrices, which has various applications including the online collaborative filtering. The problem is formulated as a repeated game between the algorithm and the adversary, where in each round t the algorithm and the adversary choose matrices X_t and L_t, respectively, and then the algorithm suffers a loss given by the Frobenius inner product of X_t and L_t. The goal of the algorithm is to minimize the cumulative loss. We can employ a standard framework called Follow the Regularized Leader (FTRL) for designing algorithms, where we need to choose an appropriate regularization function to obtain a good performance guarantee. We show that the log-determinant regularization works better than other popular regularization functions in the case where the loss matrices L_t are all sparse. Using this property, we show…
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