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Caltech

LA Probability Forum

Thursday, November 30, 2023
4:00pm to 5:00pm
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Linde Hall 310
Embedding in high-dimensional random geometric graphs
Shuangping Li, Department of Statistics, Stanford University,

I will discuss a random geometric graph model, where connections between vertices depend on the distances between latent d-dimensional feature vectors. We are especially interested in the high-dimensional case when d is large. Upon observing a graph, our aim is to recover these latent feature vectors (i.e., embedding). We have identified a phase transition phenomenon: when d is significantly larger than nH(p) (with a polylogarithmic term), embedding becomes feasible with high probability using a spectral algorithm. H here represents the entropy function. Conversely, when d is considerably smaller than nH(p), embedding becomes information theoretically impossible. In our proof of the impossibility result, we design a dynamics and show that it can find two distant embeddings that produce the same graph. This is based on joint works with Eric Ma and Tselil Schramm.

For more information, please contact Math Dept by phone at 626-395-4335 or by email at [email protected].