Abstract
|
<p>The majority of existing machine … <p>The majority of existing machine learning algorithms assume that training examples are already represented with sufficiently good features, in practice ones that are designed manually. This traditional way of preprocessing the data is not only tedious and time consuming, but also not sufficient to capture all the different aspects of the available information. With big data phenomenon, this issue is only going to grow, as the data is rarely collected and analyzed with a specific purpose in mind, and more often re-used for solving different problems. Moreover, the expert knowledge about the problem which allows them to come up with good representations does not necessarily generalize to other tasks. Therefore, much focus has been put on designing methods that can automatically learn features or representations of the data instead of learning from handcrafted features. However, a lot of this work used ad hoc methods and the theoretical understanding in this area is lacking.</p>tanding in this area is lacking.</p>
|
Author
|
Mohamed-Rafik Bouguelia +
, Sepideh Pashami +
, Sławomir Nowaczyk +
|
Conference
|
30th Annual Workshop of the Swedish Artificial Intelligence Society (SAIS)
|
Diva
|
http://hh.diva-portal.org/smash/record.jsf?searchId=1&pid=diva2:1205474
|
EndPage
|
59 +
|
PublicationType
|
Conference Paper +
|
StartPage
|
53 +
|
Title
|
Multi-Task Representation Learning +
|
Volume
|
137 +
|
Year
|
2017 +
|
Has queryThis property is a special property in this wiki.
|
Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
, Publications:Multi-Task Representation Learning +
|
Categories |
Publication +
|
Modification dateThis property is a special property in this wiki.
|
14 May 2018 20:21:43 +
|