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arxiv: 1806.04433 · v1 · pith:MJA3VV6Ynew · submitted 2018-06-12 · 🧮 math.OC

An alternating minimization algorithm for Factor Analysis

classification 🧮 math.OC
keywords algorithmmatrixgivenproblemanalysisconsideredcovarianceextremely
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The problem of decomposing a given covariance matrix as the sum of a positive semi-definite matrix of given rank and a positive semi-definite diagonal matrix, is considered. We present a projection-type algorithm to address this problem. This algorithm appears to perform extremely well and is extremely fast even when the given covariance matrix has a very large dimension. The effectiveness of the algorithm is assessed through simulation studies and by applications to three real datasets that are considered as benchmark for the problem. A local convergence analysis of the algorithm is also presented.

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    A first-order saddle-point algorithm with explicit LMO solutions for three distances solves robust data-driven factor model problems.