Published February 1, 2019 | Version v1
Journal article Open

New instances classification framework on Quran ontology applied to question answering system

  • 1. STMIK AMIKOM Purwokerto
  • 2. Universiti Teknikal Malaysia Melaka

Description

Instances classification with the small dataset for Quran ontology is the current research problem which appears in Quran ontology development. The existing classification approach used machine learning: Backpropagation Neural Network. However, this method has a drawback; if the training set amount is small, then the classifier accuracy could decline. Unfortunately, Holy Quran has a small corpus. Based on this problem, our study aims to formulate new instances classification framework for small training corpus applied to semantic question answering system. As a result, the instances classification framework consists of several essential components: pre-processing, morphology analysis, semantic analysis, feature extraction, instances classification with Radial Basis Function Networks algorithm, and the transformation module. This algorithm is chosen since it robustness to noisy data and has an excellent achievement to handle small dataset. Furthermore, document processing module on question answering system is used to access instances classification result in Quran ontology.

Files

17 9794.pdf

Files (760.2 kB)

Name Size Download all
md5:6700c3951ea10a70a56f0ea6cec20a7b
760.2 kB Preview Download