Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Serkan Piantino is active.

Publication


Featured researches published by Serkan Piantino.


Neural Computation | 2016

A mathematical motivation for complex-valued convolutional networks

Mark Tygert; Joan Bruna; Soumith Chintala; Yann LeCun; Serkan Piantino; Arthur Szlam

A complex-valued convolutional network (convnet) implements the repeated application of the following composition of three operations, recursively applying the composition to an input vector of nonnegative real numbers: (1) convolution with complex-valued vectors, followed by (2) taking the absolute value of every entry of the resulting vectors, followed by (3) local averaging. For processing real-valued random vectors, complex-valued convnets can be viewed as data-driven multiscale windowed power spectra, data-driven multiscale windowed absolute spectra, data-driven multiwavelet absolute values, or (in their most general configuration) data-driven nonlinear multiwavelet packets. Indeed, complex-valued convnets can calculate multiscale windowed spectra when the convnet filters are windowed complex-valued exponentials. Standard real-valued convnets, using rectified linear units (ReLUs), sigmoidal (e.g., logistic or tanh) nonlinearities, or max pooling, for example, do not obviously exhibit the same exact correspondence with data-driven wavelets (whereas for complex-valued convnets, the correspondence is much more than just a vague analogy). Courtesy of the exact correspondence, the remarkably rich and rigorous body of mathematical analysis for wavelets applies directly to (complex-valued) convnets.


international conference on learning representations | 2015

Fast Convolutional Nets With fbfft: A GPU Performance Evaluation

Nicolas Vasilache; Jeff Johnson; Michael Mathieu; Soumith Chintala; Serkan Piantino; Yann LeCun


Archive | 2011

Aggregating social networking system user information for display via stories

Serkan Piantino; Daniel Klatzko Gibson; Jeff Huang; Paul M. McDonald; Arun Vijayvergiya; Steven Young; Raylene Kay Yung; Mark E. Zuckerberg


Archive | 2011

Selecting social networking system user information for display via a timeline interface

Serkan Piantino; Ryan Case; Stanislav Funiak; Daniel Klatzko Gibson; Jeff Huang; Ryan David Mack; Paul M. McDonald; Arun Vijayvergiya; Joshua Wiseman; Zishuang Yang; Steven Young; Raylene Kay Yung; Mark E. Zuckerberg


Archive | 2011

Capturing Structured Data About Previous Events from Users of a Social Networking System

Paul M. McDonald; Ryan Case; Nicholas Felton; Drew W. Hamlin; Jeff Huang; Samuel Lessin; Ryan David Mack; Serkan Piantino; Josh Wiseman; Raylene Kay Yung; Mark E. Zuckerberg


Archive | 2011

Displaying social networking system user information via a historical newsfeed

Raylene Kay Yung; Ryan Case; Jeff Huang; Samuel Lessin; Ryan David Mack; Paul M. McDonald; Serkan Piantino; Arun Vijayvergiya; Joshua Wiseman; Steven Young; Mark E. Zuckerberg


arXiv: Learning | 2015

A theoretical argument for complex-valued convolutional networks

Joan Bruna; Soumith Chintala; Yann LeCun; Serkan Piantino; Arthur Szlam; Mark Tygert


Archive | 2014

AGGREGATING SOCIAL NETWORKING SYSTEM USER INFORMATION FOR TIMELINE VIEW

Serkan Piantino; Daniel Klatzko Gibson; Jeff Huang; Paul M. McDonald; Arun Vijayvergiya; Steve Young; Raylene Kay Yung; Mark E. Zuckerberg


Archive | 2015

Complex-valued convolutional networks yield data-driven multiscale windowed spectra

Joan Bruna; Soumith Chintala; Yann LeCun; Serkan Piantino; Arthur Szlam; Mark Tygert


Archive | 2014

TIMELINE VIEW FILTERED BY PERMISSIONS AND AFFINITY TO VIEWER

Serkan Piantino; Daniel Klatzko Gibson; Jeff Huang; Paul M. McDonald; Arun Vijayvergiya; Steve Young; Raylene Kay Yung; Mark E. Zuckerberg

Collaboration


Dive into the Serkan Piantino's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge