Exploring the underlying structure of haptic-based handwritten signatures using visual data mining techniques
Created by W.Langdon from
gp-bibliography.bib Revision:1.8194
- @InProceedings{Sakr:2010:ieeeHaptics,
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author = "Nizar Sakr and Fawaz A. Alsulaiman and
Julio J. Valdes and Abdulmotaleb El Saddik and Nicolas D. Georganas",
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title = "Exploring the underlying structure of haptic-based
handwritten signatures using visual data mining
techniques",
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booktitle = "2010 IEEE Haptics Symposium",
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year = "2010",
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month = "25-26 " # mar,
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pages = "467--474",
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abstract = "In this paper, multidimensional and time-varying
haptic-based handwritten signatures are analysed within
a visual data mining paradigm while relying on
unsupervised construction of virtual reality spaces
using classical optimisation and genetic programming.
Specifically, the suggested approaches make use of
nonlinear transformations to map a high dimensional
feature space into another space of smaller dimension
while minimising some error measure of information
loss. A comparison between genetic programming and
classical optimisation techniques in the construction
of visual spaces using large haptic datasets, is
provided. In addition, different distance functions
(used in the nonlinear mapping procedure between the
original and visual spaces) are examined to explore
whether the choice of measure affects the
representation accuracy of the computed visual spaces.
Furthermore, different classifiers (Support Vector
Machines (SVM), k-nearest neighbours (k-NN), and Naive
Bayes) are exploited in order to evaluate the potential
discrimination power of the generated attributes. The
results show that the relationships between the haptic
data objects and their classes can be appreciated in
most of the obtained spaces regardless of the mapping
error. Also, spaces computed using classical
optimization resulted in lower mapping errors and
better discrimination power than genetic programming,
but the later provides explicit equations relating the
original and the new spaces.",
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keywords = "genetic algorithms, genetic programming, gene
expression programming, Naive Bayes, classical
optimization techniques, distance functions,
information loss, k-nearest neighbors, multidimensional
haptic-based handwritten signatures, nonlinear mapping,
support vector machines, time-varying haptic-based
handwritten signatures, virtual reality spaces, visual
data mining techniques, data mining, haptic interfaces,
pattern classification, support vector machines,
virtual reality",
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DOI = "doi:10.1109/HAPTIC.2010.5444614",
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notes = "Distrib. & Collaborative Virtual Environments Res.
Lab., Univ. of Ottawa, Ottawa, ON, Canada Also known as
\cite{5444614}",
- }
Genetic Programming entries for
Nizar Sakr
Fawaz A Alsulaiman
Julio J Valdes
Abdulmotaleb El Saddik
Nicolas D Georganas
Citations