An Intelligent Model for Multidimensional Personality Recognition of Users using Deep Learning Methods
Due to the significant growth of textual information and data generated by humans on social networks, there is a need for systems that can automatically analyze the data and extract valuable information from them. One of the most important textual data is people's opinions about a particular topic that are expressed in the form of text. Text published by users on social networks can represent their personality. Although machine learning based methods can be considered as a good choice for analyzing these data, there is also a remarkable need for deep learning based methods to overcome the complexity and dispersion of content and syntax of textual data during the training process. In this regard, the purpose of this paper is to employ deep learning based methods for personality recognition. Accordingly, the convolutional neural network is combined with the Adaboost algorithm to consider the possibility of using the contribution of various filter lengths and gasp their potential in the final classification via combining various classifiers with respective filter sizes using AdaBoost. The proposed model was conducted on Essays and YouTube datasets. Based on the empirical results, the proposed model presented superior performance compared to other existing models on both datasets.
-
An Intelligent Method to Identify Effective Factors in Customers' Dissatisfaction in the Insurance Industry using Ensemble Learning
Kamran Balani, *, Ahmad Edalatpanah, Mahnaz Manteghipour, Mojdeh Nazari
Engineering Management and Soft Computing, -
Performance Analysis of Proxy-Based Object-Oriented Distributed Systems Using Game Theory
*, Pyman Bayat, Mozhdeh Nazari Solimandarabi
Engineering Management and Soft Computing,