Batch query strategies for one-class active learning: Unterschied zwischen den Versionen

Aus SDQ-Institutsseminar
(Die Seite wurde neu angelegt: „{{Vortrag |vortragender=Dennis Vetter |email=upddg@student.kit.edu |vortragstyp=Proposal |betreuer=Holger Trittenbach |termin=Institutsseminar/2018-10-26 |kurz…“)
 
Keine Bearbeitungszusammenfassung
 
(Eine dazwischenliegende Version desselben Benutzers wird nicht angezeigt)
Zeile 5: Zeile 5:
|betreuer=Holger Trittenbach
|betreuer=Holger Trittenbach
|termin=Institutsseminar/2018-10-26
|termin=Institutsseminar/2018-10-26
|kurzfassung=tbd
|kurzfassung=One-class classifiers learn to distinguish normal objects from outliers. These classifiers are therefore suitable for strongly imbalanced class distributions with only a small fraction of outliers. Extensions of one-class classifiers make use of labeled samples to improve classification quality. As this labeling process is often time-consuming, one may use active learning methods to detect samples where obtaining a label from the user is worthwhile, with the goal of reducing the labeling effort to a fraction of the original data set. In the case of one-class active learning this labeling process consists of sequential queries, where the user labels one sample at a time. While batch queries where the user labels multiple samples at a time have potential advantages, for example parallelizing the labeling process, their application has so far been limited to binary and multi-class classification. In this thesis we explore whether batch queries can be used for one-class classification. We strive towards a novel batch query strategy for one-class classification by applying concepts from multi-class classification to the requirements of one-class active learning.
}}
}}

Aktuelle Version vom 22. Oktober 2018, 11:06 Uhr

Vortragende(r) Dennis Vetter
Vortragstyp Proposal
Betreuer(in) Holger Trittenbach
Termin Fr 26. Oktober 2018
Vortragsmodus
Kurzfassung One-class classifiers learn to distinguish normal objects from outliers. These classifiers are therefore suitable for strongly imbalanced class distributions with only a small fraction of outliers. Extensions of one-class classifiers make use of labeled samples to improve classification quality. As this labeling process is often time-consuming, one may use active learning methods to detect samples where obtaining a label from the user is worthwhile, with the goal of reducing the labeling effort to a fraction of the original data set. In the case of one-class active learning this labeling process consists of sequential queries, where the user labels one sample at a time. While batch queries where the user labels multiple samples at a time have potential advantages, for example parallelizing the labeling process, their application has so far been limited to binary and multi-class classification. In this thesis we explore whether batch queries can be used for one-class classification. We strive towards a novel batch query strategy for one-class classification by applying concepts from multi-class classification to the requirements of one-class active learning.