%0 Journal Article %T Towards Robust Text Classification with Semantics-Aware Recurrent Neural Architecture %A Bla£¿ £¿krlj %A Jan Kralj %A Nada Lavra£¿ %A Senja Pollak %J - %D 2019 %R https://doi.org/10.3390/make1020034 %X Abstract Deep neural networks are becoming ubiquitous in text mining and natural language processing, but semantic resources, such as taxonomies and ontologies, are yet to be fully exploited in a deep learning setting. This paper presents an efficient semantic text mining approach, which converts semantic information related to a given set of documents into a set of novel features that are used for learning. The proposed Semantics-aware Recurrent deep Neural Architecture (SRNA) enables the system to learn simultaneously from the semantic vectors and from the raw text documents. We test the effectiveness of the approach on three text classification tasks: news topic categorization, sentiment analysis and gender profiling. The experiments show that the proposed approach outperforms the approach without semantic knowledge, with highest accuracy gain (up to 10%) achieved on short document fragments. View Full-Tex %K recurrent neural networks %K text mining %K semantic data mining %K taxonomies %K document classification %U https://www.mdpi.com/2504-4990/1/2/34