Emotion Detection and Event Prediction System

1
Jahidul Arafat
Jahidul Arafat
2
Chongomweru Halimu
Chongomweru Halimu
3
Mohammad Ahsan Habib
Mohammad Ahsan Habib
4
Rajib Hossain
Rajib Hossain
1 HTRC

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The focus of this research is to build a cloud based architecture to analyze the correlation between social media data and events predictions. From analytical point of view this study refurbishes the viability of models that treat public mode and emotion as a unitary phenomenon and suggest the needs to analyze those in predicting the market event status of the respective companies. The major significance of this research is the normalization and the conversion process that has utilized vector array list which thereby strengthen the conversion process and make the cloud storing an easy process. Furthermore, the experimental results demonstrate its improved performance over the factor of emotion analysis and synthesizing in the process of prediction to extract patterns in the way events behave and respond to external stimuli and vice versa.

39 Cites in Articles

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Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

Jahidul Arafat. 1970. \u201cEmotion Detection and Event Prediction System\u201d. Global Journal of Computer Science and Technology - E: Network, Web & Security GJCST-E Volume 13 (GJCST Volume 13 Issue E13): .

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GJCST Volume 13 Issue E13
Pg. 35- 42
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Crossref Journal DOI 10.17406/gjcst

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The focus of this research is to build a cloud based architecture to analyze the correlation between social media data and events predictions. From analytical point of view this study refurbishes the viability of models that treat public mode and emotion as a unitary phenomenon and suggest the needs to analyze those in predicting the market event status of the respective companies. The major significance of this research is the normalization and the conversion process that has utilized vector array list which thereby strengthen the conversion process and make the cloud storing an easy process. Furthermore, the experimental results demonstrate its improved performance over the factor of emotion analysis and synthesizing in the process of prediction to extract patterns in the way events behave and respond to external stimuli and vice versa.

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Emotion Detection and Event Prediction System

Jahidul Arafat
Jahidul Arafat HTRC
Chongomweru Halimu
Chongomweru Halimu
Mohammad Ahsan Habib
Mohammad Ahsan Habib
Rajib Hossain
Rajib Hossain

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