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Antanas Verikas

Researcher at Halmstad University

Publications -  153
Citations -  3388

Antanas Verikas is an academic researcher from Halmstad University. The author has contributed to research in topics: Artificial neural network & Image segmentation. The author has an hindex of 25, co-authored 153 publications receiving 2990 citations. Previous affiliations of Antanas Verikas include Kaunas University of Technology.

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Mining data with random forests: A survey and results of new tests

TL;DR: Random forests has become a popular technique for classification, prediction, studying variable importance, variable selection, and outlier detection, and results of new tests regarding variable rankings based on RF variable importance measures are presented.
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Feature selection with neural networks

TL;DR: The algorithm developed outperformed the other methods by achieving higher classification accuracy on all the problems tested and compared the approach with five other feature selection methods, each of which banks on a different concept.
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Soft combination of neural classifiers: a comparative study

TL;DR: This paper presents four schemes for soft fusion of the outputs of multiple classifiers using Zimmermann's compensatory operator, and an empirical evaluation substantiates the validity of the approaches with data-dependent weights, compared to various existing combination schemes of multipleclassifiers.
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Hybrid and ensemble-based soft computing techniques in bankruptcy prediction: a survey

TL;DR: This paper presents a comprehensive review of hybrid and ensemble-based soft computing techniques applied to bankruptcy prediction, namely how different techniques are combined, but not on obtained results.
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The mass appraisal of the real estate by computational intelligence

TL;DR: The experimental investigations performed using data cordially provided by the Register Center of Lithuania have shown very promising results, and the performance of the computational intelligence-based techniques was considerably higher than that obtained using the official real estate models of the Register center.