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Finite Sample Prediction and Recovery Bounds for Ordinal Embedding

机译:序贯嵌入的有限样本预测和恢复界限

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The goal of ordinal embedding is to represent items as points in a low-dimensional Euclidean space given a set of constraints like "item i is closer to item j than item k". Ordinal constraints like this often come from human judgments. The classic approach to solving this problem is known as non-metric multidimensional scaling. To account for errors and variation in judgments, we consider the noisy situation in which the given constraints are independently corrupted by reversing the correct constraint with some probability. The ordinal embedding problem has been studied for decades, but most past work pays little attention to the question of whether accurate embedding is possible, apart from empirical studies. This paper shows that under a generative data model it is possible to learn the correct embedding from noisy distance comparisons. In establishing this fundamental result, the paper makes several new contributions. First, we derive prediction error bounds for embedding from noisy distance comparisons by exploiting the fact that the rank of a distance matrix of points in R~d is at most d + 2. These bounds characterize how well a learned embedding predicts new comparative judgments. Second, we show that the underlying embedding can be recovered by solving a simple convex optimization. This result is highly non-trivial since we show that the linear map corresponding to distance comparisons is non-invertible, but there exists a nonlinear map that is invertible. Third, two new algorithms for ordinal embedding are proposed and evaluated in experiments.
机译:顺序嵌入的目的是在给定一系列约束(例如“项目i比项目k更靠近项目j”)的情况下,将项目表示为低维欧几里得空间中的点。这样的序数约束通常来自于人类的判断。解决此问题的经典方法称为非度量多维缩放。为了解决判断中的错误和变化,我们考虑了嘈杂的情况,其中给定的约束通过以一定的概率反转正确的约束来独立破坏。序数嵌入问题已经研究了数十年,但是除了经验研究之外,大多数过去的工作很少关注是否可能进行精确的嵌入这一问题。本文表明,在生成数据模型下,可以从噪声距离比较中学习正确的嵌入。在建立这一基本结果时,本文做出了一些新的贡献。首先,我们利用R〜d中点的距离矩阵的秩最多为d + 2的事实,从嘈杂的距离比较中得出嵌入预测误差的界限。这些界限表征了学习的嵌入预测新的比较判断的能力。其次,我们表明可以通过解决简单的凸优化来恢复底层嵌入。由于我们表明与距离比较相对应的线性映射是不可逆的,但存在一个不可逆的非线性映射,因此此结果非常重要。第三,提出了两种新的序数嵌入算法,并在实验中进行了评估。

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