Abstract

Online Sentiments Analysis is a trending research domain of study which is based on natural language processing, artificial intelligence, and computational linguistics. Negation sentiments usually are not included in sentiment’s analysis process. The depression analysis can be improved by negative sentiments processing. The negation sentiments may contribute to classify the depression problems and its causes. The proposed clustering technique can detect female sentiments from the sentiment’s text through cause’s classification, and the written sentiment style. The combination of sentiment analysis and neural network is a promising solution for creating a new clustering algorithm. According to Egypt Independent Journal in 2018, 7% of Egyptians suffer from mental illness reported by the Public Health Ministry in Egypt. But the real statistics is more than the mentioned percentage which causes major social problems such as divorce, avoiding responsibilities, or non-marriage. This paper will address the real statistics and cluster the depression causes and social status for each sentiment. Online women sentiments are the essential focus of this research. The proposed technique consists of two algorithms clustering for user’s sex and classification algorithm for causes and responsibilities of women. The proposed clustering algorithm can recognize automatically for the sentiments user sex (females or males) and the level of depression automatically. The neural network clustering approach will produce accurate analysis results. The hardness of depression analysis implicitly and explicitly demonstrated in the different classifications for sentiments. This paper introduces a new technique for clustering sentiments and evaluating Egyptian women depression based on social sentiments.

Highlights

  • Women spend a lot time online on social networks and communities

  • According to Egypt Independent Journal in 2018, 7% of Egyptians suffer from mental illness reported by the Health Ministry in Egypt[1]

  • Determine the negative polarity classification for the translated sentiment. 16. if sj Ns do, Ns refers to Negative sentiment 17: Cluster Lj into three levels of depression based on recurrent neural network algorithm L1,L2,L3

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Summary

INTRODUCTION

Women spend a lot time online on social networks and communities. That becomes a main platform for expressing their feelings such positive or negative. After the horrific reports announced by the World Health Organization [2], According to Global Terrorism Database, the number of suicide bombers exceeded 400 attacks per year in Egypt [3], in addition to thousands of suicide attempts in the homes and streets of Egypt every year. About half of these attempts and suicides are from ladies or women. This paper presents a classification algorithm for identifying the causes, and responsibilities recognition and sentiments evaluation on Facebook social network. This paper presents a proposed technique for evaluating the sentiment analysis of Egyptian women.

Sentiment Analysis
Sentiment Summarization
Preprocessing Phase Remove stop Words
Hierarchal Classification Sentiments
A Depression Clustering
A Proposed Algorithm of : for Arabic Sentiments
19. Cluster sj into two user‘s sex male M or female F 20
Poisson Distribution Phase
Preparing the Dataset
Accuracy of Sentiment Analysis Polarity
Clustering Machine Learning and Poisson Distribution
CONCLUSION
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