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Quantized Random Projections and Non-Linear Estimation of Cosine Similarity

机译:余弦相似度的量化随机投影和非线性估计

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Random projections constitute a simple, yet effective technique for dimensionality reduction with applications in learning and search problems. In the present paper, we consider the problem of estimating cosine similarities when the projected data undergo scalar quantization to b bits. We here argue that the maximum likelihood estimator (MLE) is a principled approach to deal with the non-linearity resulting from quantization, and subsequently study its computational and statistical properties. A specific focus is on the on the trade-off between bit depth and the number of projections given a fixed budget of bits for storage or transmission. Along the way, we also touch upon the existence of a qualitative counterpart to the Johnson-Lindenstrauss lemma in the presence of quantization.
机译:随机投影构成一种简单而有效的降维技术,并应用于学习和搜索问题中。在本文中,我们考虑了当投影数据经过标量量化为b位时估计余弦相似度的问题。在这里,我们认为最大似然估计器(MLE)是一种处理量化带来的非线性的原理方法,并随后研究其计算和统计特性。在给定用于存储或传输的固定比特预算的情况下,重点特别放在比特深度与投影数量之间的权衡上。在此过程中,我们还谈到了在存在量化的情况下,Johnson-Lindenstrauss引理的定性对应物的存在。

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