Learning linear classifiers sensitive to example dependent and noisy costs

Research output: Journal contributionsJournal articlesResearchpeer-review

Standard

Learning linear classifiers sensitive to example dependent and noisy costs. / Geibel, Peter; Brefeld, Ulf; Wysotzki, Fritz.
In: Lecture Notes in Computer Science, Vol. 2810, 01.01.2003, p. 167-178.

Research output: Journal contributionsJournal articlesResearchpeer-review

Harvard

APA

Vancouver

Geibel P, Brefeld U, Wysotzki F. Learning linear classifiers sensitive to example dependent and noisy costs. Lecture Notes in Computer Science. 2003 Jan 1;2810:167-178. doi: 10.1007/978-3-540-45231-7_16

Bibtex

@article{115755a0aa344938855089dff5b5dded,
title = "Learning linear classifiers sensitive to example dependent and noisy costs",
abstract = "Learning algorithms from the fields of artificial neural networks and machine learning, typically, do not take any costs into account or allow only costs depending on the classes of the examples that are used for learning. As an extension of class dependent costs, we consider costs that are example, i.e. feature and class dependent. We derive a cost-sensitive perceptron learning rule for non-separable classes, that can be extended to multi-modal classes (DIPOL) and present a natural cost-sensitive extension of the support vector machine (SVM).",
keywords = "Business informatics, Informatics",
author = "Peter Geibel and Ulf Brefeld and Fritz Wysotzki",
year = "2003",
month = jan,
day = "1",
doi = "10.1007/978-3-540-45231-7_16",
language = "English",
volume = "2810",
pages = "167--178",
journal = "Lecture Notes in Computer Science",
issn = "0302-9743",
publisher = "Springer Science and Business Media Deutschland",

}

RIS

TY - JOUR

T1 - Learning linear classifiers sensitive to example dependent and noisy costs

AU - Geibel, Peter

AU - Brefeld, Ulf

AU - Wysotzki, Fritz

PY - 2003/1/1

Y1 - 2003/1/1

N2 - Learning algorithms from the fields of artificial neural networks and machine learning, typically, do not take any costs into account or allow only costs depending on the classes of the examples that are used for learning. As an extension of class dependent costs, we consider costs that are example, i.e. feature and class dependent. We derive a cost-sensitive perceptron learning rule for non-separable classes, that can be extended to multi-modal classes (DIPOL) and present a natural cost-sensitive extension of the support vector machine (SVM).

AB - Learning algorithms from the fields of artificial neural networks and machine learning, typically, do not take any costs into account or allow only costs depending on the classes of the examples that are used for learning. As an extension of class dependent costs, we consider costs that are example, i.e. feature and class dependent. We derive a cost-sensitive perceptron learning rule for non-separable classes, that can be extended to multi-modal classes (DIPOL) and present a natural cost-sensitive extension of the support vector machine (SVM).

KW - Business informatics

KW - Informatics

UR - http://www.scopus.com/inward/record.url?scp=35248866377&partnerID=8YFLogxK

UR - https://www.mendeley.com/catalogue/f68182df-2f13-3814-b398-89977fc2b1ce/

U2 - 10.1007/978-3-540-45231-7_16

DO - 10.1007/978-3-540-45231-7_16

M3 - Journal articles

AN - SCOPUS:35248866377

VL - 2810

SP - 167

EP - 178

JO - Lecture Notes in Computer Science

JF - Lecture Notes in Computer Science

SN - 0302-9743

ER -

Recently viewed

Researchers

  1. Daniel J. Lang

Publications

  1. Perception of Space and Time in a Created Environment
  2. Solution for the direct kinematics problem of the general stewart-gough platform by using only linear actuators’ orientations
  3. Usage pattern-based exposure screening as a simple tool for the regional priority-setting in environmental risk assessment of veterinary antibiotics
  4. IT Governance in Scaling Agile Frameworks
  5. Effect of yttrium addition on lattice parameter, Young's modulus and vacancy of magnesium
  6. What has gone wrong with application development? Who is the culprit?
  7. Explosive behaviour and long memory with an application to European bond yield spreads
  8. Introduction
  9. CaO dissolution during melting and solidification of a Mg-10 wt.% CaO alloy detected with in situ synchrotron radiation diffraction
  10. Self-Compassion as a Facet of Neuroticism? A Reply to the Comments of Neff, Tóth-Király, and Colosimo (2018)
  11. Not only biocidal products
  12. Extending Internet of Things Enterprise Architectures by Digital Twins Exemplified in the Context of the Hamburg Port Authority
  13. Microeconometric Studies on Firm Behavior and Performance
  14. Iconography on Scientific Instruments. Introduction
  15. Technology Implementation in Pre-Service Science Teacher Education Based on the Transformative View of TPACK: Effects on Pre-Service Teachers' TPACK, Behavioral Orientations and Actions in Practice
  16. Greater fit and a greater gap
  17. A Transatlantic Symposium on the Restatement (Fourth)
  18. Active First Movers vs. Late Free-Riders? An Empirical Analysis of UN PRI Signatories' Commitment
  19. Information Technology in Environmental Engineering
  20. "It´s All in the Game"
  21. Cascade MIMO P-PID Controllers Applied in an Over-actuated Quadrotor Tilt-Rotor
  22. Web-Based Stress Management Program for University Students in Indonesia
  23. Adjust for windows
  24. The Role of Network Size for the Robustness of Centrality Measures
  25. An improved method for the analysis of volatile polyfluorinated alkyl substances in environmental air samples