Near Optimal Heteroscedastic Regression with Symbiotic Learning
Dheeraj Baby, Aniket Das, Dheeraj Nagaraj, Praneeth, Netrapalli

TL;DR
This paper introduces a near-optimal algorithm for heteroscedastic linear regression that improves error bounds and applies to problems like multiplicative noise and phase retrieval, with novel theoretical guarantees.
Contribution
The paper presents a new alternating minimization algorithm with non-asymptotic guarantees for heteroscedastic regression, improving error bounds and establishing a novel lower bound technique.
Findings
Achieves near-optimal error bounds up to log factors.
Provides the first non-asymptotic guarantee for weighted least squares in this context.
Applies to multiplicative noise regression and phase retrieval, offering fast rates.
Abstract
We consider the problem of heteroscedastic linear regression, where, given samples from with , , we aim to estimate . Beyond classical applications of such models in statistics, econometrics, time series analysis etc., it is also particularly relevant in machine learning when data is collected from multiple sources of varying but apriori unknown quality. Our work shows that we can estimate in squared norm up to an error of and prove a matching lower bound (upto log factors). This represents a substantial improvement upon the previous best known upper…
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Taxonomy
TopicsStatistical Methods and Inference · Machine Learning and Algorithms · Sparse and Compressive Sensing Techniques
MethodsLinear Regression
