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    On Approximating the Number of kk-cliques in Sublinear Time

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    We study the problem of approximating the number of kk-cliques in a graph when given query access to the graph. We consider the standard query model for general graphs via (1) degree queries, (2) neighbor queries and (3) pair queries. Let nn denote the number of vertices in the graph, mm the number of edges, and CkC_k the number of kk-cliques. We design an algorithm that outputs a (1+ε)(1+\varepsilon)-approximation (with high probability) for CkC_k, whose expected query complexity and running time are O\left(\frac{n}{C_k^{1/k}}+\frac{m^{k/2}}{C_k}\right)\poly(\log n,1/\varepsilon,k). Hence, the complexity of the algorithm is sublinear in the size of the graph for Ck=ω(mk/21)C_k = \omega(m^{k/2-1}). Furthermore, we prove a lower bound showing that the query complexity of our algorithm is essentially optimal (up to the dependence on logn\log n, 1/ε1/\varepsilon and kk). The previous results in this vein are by Feige (SICOMP 06) and by Goldreich and Ron (RSA 08) for edge counting (k=2k=2) and by Eden et al. (FOCS 2015) for triangle counting (k=3k=3). Our result matches the complexities of these results. The previous result by Eden et al. hinges on a certain amortization technique that works only for triangle counting, and does not generalize for larger cliques. We obtain a general algorithm that works for any k3k\geq 3 by designing a procedure that samples each kk-clique incident to a given set SS of vertices with approximately equal probability. The primary difficulty is in finding cliques incident to purely high-degree vertices, since random sampling within neighbors has a low success probability. This is achieved by an algorithm that samples uniform random high degree vertices and a careful tradeoff between estimating cliques incident purely to high-degree vertices and those that include a low-degree vertex
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