In PAC learning, error tolerance refers to the ability of an algorithm to learn when the examples received have been corrupted in some way. In fact, this is a very common and important issue since in many applications it is not possible to access noise-free data. Noise can interfere with the learning process at different levels: the algorithm may receive data that have been occasionally mislabeled, or the inputs may have some false information, or the classification of the examples may have been maliciously adulterated.
Attributes | Values |
---|---|
rdfs:label |
|
rdfs:comment |
|
dbp:wikiPageUsesTemplate | |
Subject | |
prov:wasDerivedFrom | |
Wikipage page ID |
|
page length (characters) of wiki page |
|
Wikipage revision ID |
|
Link from a Wikipage to another Wikipage | |
has abstract |
|
foaf:isPrimaryTopicOf | |
is Wikipage redirect of | |
is Link from a Wikipage to another Wikipage of | |
is foaf:primaryTopic of |