nuclear norm solution
5927edd18c5dd83aa8936a4610c72029-Supplemental-Conference.pdf
In this section, we examine our theoretical results with controlled experiments via synthetic data. We do not have a complete explanation for such spikes. At first glance, overfitting could happen when the number of linear measurements is less than the size of the groundtruth matrix. Moreover, when the measurements satisfy RIP, Li et al. Soltanolkotabi [ 45 ] show that GD exactly recovers the ground truth. To our best knowledge, most existing generalization analysis for flat regularization are for two-layer models, e.g., Li et al.
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Implicit Regularization in Matrix Factorization
We study implicit regularization when optimizing an underdetermined quadratic objective over a matrix X with gradient descent on a factorization of X. We conjecture and provide empirical and theoretical evidence that with small enough step sizes and initialization close enough to the origin, gradient descent on a full dimensional factorization converges to the minimum nuclear norm solution.
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- Asia > Middle East > Jordan (0.04)
Implicit Regularization in Matrix Factorization
Gunasekar, Suriya, Woodworth, Blake E., Bhojanapalli, Srinadh, Neyshabur, Behnam, Srebro, Nati
We study implicit regularization when optimizing an underdetermined quadratic objective over a matrix $X$ with gradient descent on a factorization of X. We conjecture and provide empirical and theoretical evidence that with small enough step sizes and initialization close enough to the origin, gradient descent on a full dimensional factorization converges to the minimum nuclear norm solution.
- North America > United States > Illinois > Cook County > Chicago (0.05)
- North America > United States > California > Los Angeles County > Long Beach (0.04)
- Asia > Middle East > Jordan (0.04)
Implicit Regularization in Matrix Factorization
Gunasekar, Suriya, Woodworth, Blake, Bhojanapalli, Srinadh, Neyshabur, Behnam, Srebro, Nathan
We study implicit regularization when optimizing an underdetermined quadratic objective over a matrix $X$ with gradient descent on a factorization of $X$. We conjecture and provide empirical and theoretical evidence that with small enough step sizes and initialization close enough to the origin, gradient descent on a full dimensional factorization converges to the minimum nuclear norm solution.