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Bibliografie

Conference Paper (international conference)

Performance of Probabilistic Approach and Artificial Neural Network on Questionnaire Data Concerning Taiwanese Ecotourism

Bína Vladislav, Kratochvíl Václav, Váchová L., Jiroušek Radim, Lee T. R.

: Sensor Networks and Signal Processing, p. 283-295 , Eds: Peng Sheng-Lung, Favorskaya Margarita N., Chao Han-Chieh

: Sensor Networks and Signal Processing (SNSP 2019) /2./, (Hualien, TW, 20191119)

: GA19-06569S, GA ČR, MOST-04-18, Akademie věd - GA AV ČR

: Compositional models, Artificial neural network, Model comparison, Taiwanese ecotourism data set

: 10.1007/978-981-15-4917-5_22

: http://library.utia.cas.cz/separaty/2020/MTR/kratochvil-0531046.pdf

(eng): This paper aims to perform modeling of Taiwanese farm and ecotourism data using compositional models as a probabilistic approach and to compare its results with the performance of an artificial neural network approach. Authors use probabilistic compositional models together with the artificial neural network as a classifier and compare the accuracy of both approaches. The probabilistic model structure is learned using hill climbing algorithm, and the weights of multilayer feedforward artificial neural network are learned using an R implementation of H2O library for deep learning. In case of both approaches, we employ a non-exhaustive cross-validation method and compare the models. The comparison is augmented by the structure of the compositional model and basic characterization of artificial neural network. As expected, the compositional models show significant advantages in interpretability of results and (probabilistic) relations between variables, whereas the artificial neural network provides more accurate yet “black-box” model.

: IN

: 10103