This document summarizes a research paper that aimed to improve classification of spoken Arabic language letters using the Radial Basis Function (RBF) neural network. The paper proposes a three-step approach: 1) preprocessing the speech signals which includes removing noise and segmenting the signals, 2) extracting statistical features from the preprocessed signals like zero-crossing rate and MFCCs, and 3) classifying the letters using an RBF neural network. The researchers tested different parameters and found classification accuracy improved from 90-99.375% compared to prior works. They concluded that combining statistical features with RBF neural networks provided over 1.845% better recognition rates than other methods for Arabic speech classification.