MetaCartSign in to MyCiteSeer

Include Citations | Advanced Search | Help

Include Citations | Advanced Search | Help

  Using diversity in preparing ensembles of classifiers based on different feature subsets to minimize generalization error (2001) [21 citations — 2 self]

Download:
Download as a PDF
by Gabriele Zenobi, Pádraig Cunningham
Lecture Notes in Computer Science
ftp://ftp.cs.tcd.ie/pub/tech-reports/reports.01/TCD-CS-2001-11.pdf
Add To MetaCart

Abstract:

Abstract. It is well known that ensembles of predictors produce better accuracy than a single predictor provided there is diversity in the ensemble. This diversity manifests itself as disagreement or ambiguity among the ensemble members. In this paper we focus on ensembles of classifiers based on different feature subsets and we present a process for producing such ensembles that emphasizes diversity (ambiguity) in the ensemble members. This emphasis on diversity produces ensembles with low generalization errors from ensemble members with comparatively high generalization error. We compare this with ensembles produced focusing only on the error of the ensemble members (without regard to overall diversity) and find that the ensembles based on ambiguity have lower generalization error. Further, we find that the ensemble members produced focusing on ambiguity have less features on average that those based on error only. We suggest that this indicates that these ensemble members are local learners. 1.

Citations

1453 Bagging Predictors – Breiman - 1996
368 Neural network ensembles – Hansen, Salamon - 1990
308 Neural network ensembles, cross validation, and active learning – Krogh, Vedelsby - 1995
161 The random subspace method for constructing decision forests – Ho - 1998
82 Generating accurate and diverse members of a neural-network ensemble – Opitz, Shavlik - 1996
35 Diversity versus quality in classification ensembles based on feature selection – Cunningham, Carney - 2000
30 Genetic approach for feature selection for ensemble creation – Guerra-Salcedo, Whitley - 1999
20 X.: Ensemble learning via negative correlation. Neural Networks 12(10 – Liu, Yao - 1999
13 Feature Selection Mechanisms for Ensemble Creation: A Genetic Search Perspective, in Data Mining with Evolutionary Algorithms: Research Directions. Papers from the AAAI Workshop. Alex A. Freitas (Ed – Guerra-Salcedo, Whitley - 1999
11 The Wrapper Approach, in Feature Selection for Knowledge Discovery and Data – Kohavi, John - 1998
8 Collective Decision Making – Nitzan, Paroush - 1985
6 Nearest Neighbours in Random Subspaces – Ho - 1998
5 Case representation issues for case-based reasoning from ensemble research – Cunningham, Zenobi - 2001
3 Stuffing Mind into Computer: Knowledge and Learning for Intelligent Systems – Cherkauer - 1995
2 Using Neural Nets for Decision Support – Byrne, Cunningham, et al. - 2000
2 Freitas (Ed – Alex - 1999