TY - JOUR
T1 - Machine learning of visual object categorization: an application of the SUSTAIN model
AU - Carmantini, GS
AU - Cangelosi, A
AU - Wills, AJ
PY - 2014/8/12
Y1 - 2014/8/12
N2 - Formal models of categorization are psychological theories
that try to describe the process of categorization in a lawful
way, using the language of mathematics. Their mathematical
formulation makes it possible for the models to generate
precise, quantitative predictions. SUSTAIN (Love, Medin &
Gureckis, 2004) is a powerful formal model of categorization
that has been used to model a range of human experimental
data, describing the process of categorization in terms of an
adaptive clustering principle. Love et al. (2004) suggested a
possible application of the model in the field of object recognition
and categorization. The present study explores this possibility,
investigating at the same time the utility of using a
formal model of categorization in a typical machine learning
task. The image categorization performance of SUSTAIN on
a well-known image set is compared with that of a linear Support
Vector Machine, confirming the capability of SUSTAIN
to perform image categorization with a reasonable accuracy,
even if at a rather high computational cost.
AB - Formal models of categorization are psychological theories
that try to describe the process of categorization in a lawful
way, using the language of mathematics. Their mathematical
formulation makes it possible for the models to generate
precise, quantitative predictions. SUSTAIN (Love, Medin &
Gureckis, 2004) is a powerful formal model of categorization
that has been used to model a range of human experimental
data, describing the process of categorization in terms of an
adaptive clustering principle. Love et al. (2004) suggested a
possible application of the model in the field of object recognition
and categorization. The present study explores this possibility,
investigating at the same time the utility of using a
formal model of categorization in a typical machine learning
task. The image categorization performance of SUSTAIN on
a well-known image set is compared with that of a linear Support
Vector Machine, confirming the capability of SUSTAIN
to perform image categorization with a reasonable accuracy,
even if at a rather high computational cost.
UR - https://pearl.plymouth.ac.uk/context/psy-research/article/1032/viewcontent/Carmantini_202014_20cogsci.pdf
M3 - Conference proceedings published in a journal
VL - 0
SP - 290
EP - 295
JO - Proceedings of the 36th Annual Conference of the Cognitive Science Society
JF - Proceedings of the 36th Annual Conference of the Cognitive Science Society
IS - 0
ER -