Abstract

Social platform such as Facebook, Twitter and Instagram generates tremendous data these days. Researchers make use of these data to extract meaningful information and predict future. Especially twitter is the platform people can share their thought briefly on a certain topic and it provides real-time streaming data API (Application Programming Interface) for filtering data for a purpose. Over time a country has changed its interest in other countries. People can get a benefit to see a tendency of interest as well as prediction result from twitter streaming data. Capturing twitter data flow is connected to how people think and have an interest on the topic. We believe real-time twitter data reflect this change. Long-term Short-term Memory Unit (LSTM) is the widely used deep learning unit from recurrent neural network to learn the sequence. The purpose of this work is building prediction model “Country Interest Analysis based on LSTM (CIAL)” to forecast next interval of tweet counts when it comes to referring country on the tweet post. Additionally it’s necessary to cluster for analyzing multiple countries twitter data over the remote nodes. This paper presents how country attention tendency can be captured over twitter streaming data with LSTM algorithm.

Highlights

  • Trend analysis is a common and powerful way to observe certain phenomena so that it’s influential to pull out overall tendency from data

  • A lot of applications can be utilized with Long-term Short-term memory (LSTM)

  • Twitter is one of social platform which people can leave their thought on specific topic or their status instantly over the countries

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Summary

Introduction

Trend analysis is a common and powerful way to observe certain phenomena so that it’s influential to pull out overall tendency from data. Twitter is one of social platform which people can leave their thought on specific topic or their status instantly over the countries It has generated tremendous data every day. Twitter provides real-time streaming data generated over the world as well as filtration function based on keyword, language, geo-location and follow. Data analyst manipulates this feature for their own purpose. This paper presents how LSTM model captures meaningful information from twitter stream data applied for machine learning technique. It is good material to predict near future as well On the other hand, twitter has a different property It captures current trending message containing all kinds of information encompassing emotional status, happening, positive or negative opinion on a topic etc. It can shows the interest rate in a sense either positive or negative way

Twitter
Proposed Work
Forecasting with LSTM
Data Processing
Neural Network
Conclusion and Future Work
Full Text
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