Event 

Title:
The quest for fast learning from few examples
When:
07.11.2017 - 07.11.2017
Where:
USI Lugano Campus - Lugano
Category:
ICS Events

Showcase

No Images!

Event Videos

Item not found.
Check All Videos

Description

The quest for fast learning from few examples

 

Speaker:  Andreas Loukas (EPFL, Switzerland) 

Date:  Tuesday, November 7, 2017

Place:  USI Lugano Campus, room SI-008, Informatics building (Via G. Buffi 13) 

Time:  15:30

 

Abstract:

Though the data in our disposal are numerous and diverse, deriving meaning from them is often non trivial. This talk centers on two key challenges of data analysis, relating to the sample complexity (how many examples suffice to learn something with statistical significance) and computational complexity (how long does the computation take) of learning algorithms. In particular, we are going to consider two famous algorithms and ask what can they learn when given very few examples or a fraction of the computation time. The talk will then move on to consider why deep learning works so well for grid-structured data such as images and speech, and whether its success can be replicated for data whose inherent structure is captured by a graph. 

Biography:

Andreas Loukas received a doctorate in computer science from Delft University of Technology, The Netherlands, where he focused on graph algorithms for signal processing. He is currently a research scientist at the LTS2 Signal Processing Lab in EPFL, Switzerland. His research interests lie in the intersection(s) of graph theory, high dimensional data analysis, machine learning, and signal processing.

Host:  Prof. Antonio Carzaniga

Venue

Venue:
USI Lugano Campus
Street:
Via G. Buffi 13
ZIP:
6900
City:
Lugano

Venue Description

Sorry, no description available

cardio-centro-ticnic-logo

logo cscs

This website uses cookies to improve your experience. We'll assume you're ok with this, but you can opt-out if you wish. Read more