On Binary Embedding using Circulant Matrices

2015 
Binary embeddings provide ecient and powerful ways to perform operations on large scale data. However binary embedding typically requires long codes in order to preserve the discriminative power of the input space. Thus binary coding methods traditionally suer from high computation and storage costs in such a scenario. To address this problem, we propose Circulant Binary Embedding (CBE) which generates binary codes by projecting the data with a circulant matrix. The circulant structure allows us to use Fast Fourier Transform algorithms to speed up the computation. For obtaining k-bit binary codes from d-dimensional data, our method improves the time complexity fromO(dk) toO(d logd), and the space complexity fromO(dk) toO(d). We study two settings, which dier in the way we choose the parameters of the circulant matrix. In the rst, the parameters are chosen randomly and in the second, the parameters are learned using the data. For randomized CBE, we give a theoretical analysis comparing it with binary embedding using an unstructured random projection matrix. The challenge here is to show that the dependencies in the entries of the circulant matrix do not lead to a loss in performance. In the second setting, we design a novel time-frequency alternating optimization to learn data-dependent circulant projections, which alternatively minimizes the objective in original and Fourier domains. In both the settings, we show by extensive experiments that the CBE approach gives much better performance than the state-ofthe-art approaches if we x a running time, and provides much faster computation with negligible performance degradation if we x the number of bits in the embedding.
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