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- Asia > Middle East > Jordan (0.05)
- Asia > South Korea > Seoul > Seoul (0.04)
- North America > United States > Oregon > Multnomah County > Portland (0.04)
- North America > Canada (0.04)
- Asia > Middle East > Jordan (0.05)
- Asia > South Korea > Seoul > Seoul (0.04)
- North America > United States > Oregon > Multnomah County > Portland (0.04)
- North America > Canada (0.04)
Limits on Testing Structural Changes in Ising Models
We present novel information-theoretic limits on detecting sparse changes in Ising models, a problem that arises in many applications where network changes can occur due to some external stimuli. We show that the sample complexity for detecting sparse changes, in a minimax sense, is no better than learning the entire model even in settings with local sparsity. This is a surprising fact in light of prior work rooted in sparse recovery methods, which suggest that sample complexity in this context scales only with the number of network changes. To shed light on when change detection is easier than structured learning, we consider testing of edge deletion in forest-structured graphs, and high-temperature ferromagnets as case studies. We show for these that testing of small changes is similarly hard, but testing of large changes is well-separated from structure learning. These results imply that testing of graphical models may not be amenable to concepts such as restricted strong convexity leveraged for sparsity pattern recovery, and algorithm development instead should be directed towards detection of large changes.
- North America > United States > Oregon > Multnomah County > Portland (0.04)
- North America > Canada (0.04)
A General Algorithm for Solving Rank-one Matrix Sensing
Qin, Lianke, Song, Zhao, Zhang, Ruizhe
Matrix sensing has many real-world applications in science and engineering, such as system control, distance embedding, and computer vision. The goal of matrix sensing is to recover a matrix $A_\star \in \mathbb{R}^{n \times n}$, based on a sequence of measurements $(u_i,b_i) \in \mathbb{R}^{n} \times \mathbb{R}$ such that $u_i^\top A_\star u_i = b_i$. Previous work [ZJD15] focused on the scenario where matrix $A_{\star}$ has a small rank, e.g. rank-$k$. Their analysis heavily relies on the RIP assumption, making it unclear how to generalize to high-rank matrices. In this paper, we relax that rank-$k$ assumption and solve a much more general matrix sensing problem. Given an accuracy parameter $\delta \in (0,1)$, we can compute $A \in \mathbb{R}^{n \times n}$ in $\widetilde{O}(m^{3/2} n^2 \delta^{-1} )$, such that $ |u_i^\top A u_i - b_i| \leq \delta$ for all $i \in [m]$. We design an efficient algorithm with provable convergence guarantees using stochastic gradient descent for this problem.
- North America > United States > Texas > Travis County > Austin (0.04)
- North America > United States > New York > New York County > New York City (0.04)
Robust Large-Margin Learning in Hyperbolic Space
Weber, Melanie, Zaheer, Manzil, Rawat, Ankit Singh, Menon, Aditya, Kumar, Sanjiv
Recently, there has been a surge of interest in representation learning in hyperbolic spaces, driven by their ability to represent hierarchical data with significantly fewer dimensions than standard Euclidean spaces. However, the viability and benefits of hyperbolic spaces for downstream machine learning tasks have received less attention. In this paper, we present, to our knowledge, the first theoretical guarantees for learning a classifier in hyperbolic rather than Euclidean space. Specifically, we consider the problem of learning a large-margin classifier for data possessing a hierarchical structure. Our first contribution is a hyperbolic perceptron algorithm, which provably converges to a separating hyperplane. We then provide an algorithm to efficiently learn a large-margin hyperplane, relying on the careful injection of adversarial examples. Finally, we prove that for hierarchical data that embeds well into hyperbolic space, the low embedding dimension ensures superior guarantees when learning the classifier directly in hyperbolic space.
- Asia > Middle East > Lebanon (0.04)
- North America > United States > California > Alameda County > Berkeley (0.04)
- Asia > Middle East > Jordan (0.04)
- Asia > Middle East > Israel (0.04)