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Dive into the research topics where Brando Miranda is active.

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Featured researches published by Brando Miranda.


Nature Communications | 2018

High-performance and scalable on-chip digital Fourier transform spectroscopy

Derek Kita; Brando Miranda; David Favela; David Bono; Jerome Michon; Hongtao Lin; Tian Gu; Juejun Hu

On-chip spectrometers have the potential to offer dramatic size, weight, and power advantages over conventional benchtop instruments for many applications such as spectroscopic sensing, optical network performance monitoring, hyperspectral imaging, and radio-frequency spectrum analysis. Existing on-chip spectrometer designs, however, are limited in spectral channel count and signal-to-noise ratio. Here we demonstrate a transformative on-chip digital Fourier transform spectrometer that acquires high-resolution spectra via time-domain modulation of a reconfigurable Mach-Zehnder interferometer. The device, fabricated and packaged using industry-standard silicon photonics technology, claims the multiplex advantage to dramatically boost the signal-to-noise ratio and unprecedented scalability capable of addressing exponentially increasing numbers of spectral channels. We further explore and implement machine learning regularization techniques to spectrum reconstruction. Using an ‘elastic-D1’ regularized regression method that we develop, we achieved significant noise suppression for both broad (>600 GHz) and narrow (<25 GHz) spectral features, as well as spectral resolution enhancement beyond the classical Rayleigh criterion.On-chip spectrometers typically have limited spectral channels and low signal to noise ratios. Here the authors introduce a digital architecture that uses switches to change the interferometer path lengths, enabling exponentially more spectral channels per circuit element and lower noise by leveraging a machine learning reconstruction algorithm.


International Journal of Automation and Computing | 2017

Why and when can deep-but not shallow-networks avoid the curse of dimensionality: A review

Tomaso Poggio; H. N. Mhaskar; Lorenzo Rosasco; Brando Miranda; Qianli Liao


arXiv: Learning | 2017

Theory of Deep Learning III: explaining the non-overfitting puzzle

Tomaso Poggio; Kenji Kawaguchi; Qianli Liao; Brando Miranda; Lorenzo Rosasco; Xavier Boix; Jack Hidary; H. N. Mhaskar


arXiv: Learning | 2017

Theory of Deep Learning IIb: Optimization Properties of SGD

Chiyuan Zhang; Qianli Liao; Alexander Rakhlin; Brando Miranda; Noah Golowich; Tomaso Poggio


Archive | 2017

Musings on Deep Learning: Properties of SGD

Chiyuan Zhang; Qianli Liao; Alexander Rakhlin; Karthik Sridharan; Brando Miranda; Noah Golowich; Tomaso Poggio


arxiv:physics.app-ph | 2018

Digital Fourier transform spectroscopy: a high-performance, scalable technology for on-chip spectrum analysis

Derek Kita; Brando Miranda; David Favela; David Bono; Jerome Michon; Hongtao Lin; Tian Gu; Juejun Hu


arXiv: Learning | 2018

A Surprising Linear Relationship Predicts Test Performance in Deep Networks.

Qianli Liao; Brando Miranda; Andrzej Banburski; Jack Hidary; Tomaso Poggio


arXiv: Learning | 2018

Theory IIIb: Generalization in Deep Networks

Tomaso Poggio; Qianli Liao; Brando Miranda; Andrzej Banburski; Xavier Boix; Jack Hidary


Archive | 2018

Classical generalization bounds are surprisingly tight for Deep Networks

Qianli Liao; Brando Miranda; Jack Hidary; Tomaso Poggio


Archive | 2016

Why and When Can Deep -- but Not Shallow -- Networks Avoid the Curse of Dimensionality

Tomaso Poggio; H. N. Mhaskar; Lorenzo Rosasco; Brando Miranda; Qianli Liao

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Qianli Liao

McGovern Institute for Brain Research

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Tomaso Poggio

Massachusetts Institute of Technology

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H. N. Mhaskar

Claremont Graduate University

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Lorenzo Rosasco

Massachusetts Institute of Technology

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Alexander Rakhlin

University of Pennsylvania

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David Bono

Massachusetts Institute of Technology

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David Favela

Massachusetts Institute of Technology

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Derek Kita

Massachusetts Institute of Technology

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Hongtao Lin

Massachusetts Institute of Technology

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