Web page classification with Google Image Search results
- URL: http://arxiv.org/abs/2006.00226v2
- Date: Sun, 27 Dec 2020 06:23:37 GMT
- Title: Web page classification with Google Image Search results
- Authors: Fahri Aydos, A. Murat \"Ozbayo\u{g}lu, Yahya \c{S}irin, M. Fatih
Demirci
- Abstract summary: We introduce a novel method that combines multiple neural network results to decide the class of the input.
This is the first study which used the method for web pages classification.
- Score: 0.28675177318965034
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we introduce a novel method that combines multiple neural
network results to decide the class of the input. This is the first study which
used the method for web pages classification. In our model, each element is
represented by multiple descriptive images. After the training process of the
neural network model, each element is classified by calculating its descriptive
image results. We apply our idea to the web page classification problem using
Google Image Search results as descriptive images. We obtained a classification
rate of 94.90% on the WebScreenshots dataset that contains 20000 web sites in 4
classes. The method is easily applicable to similar problems.
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