Social network analytics : trend analysis in Twitter

Twitter is one of a popular microblogging site that allows registered user to engage and interact in short messages pertaining to wide variety of topics, not exceeding 140 characters. Alongside other social networking services, Twitter adopt a social model called “following” which allows registered...

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Main Author: Soh, Jophia Yi Wen
Other Authors: Sourav Saha Bhowmick
Format: Final Year Project
Language:English
Published: 2017
Subjects:
Online Access:http://hdl.handle.net/10356/70453
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-704532023-03-03T20:28:09Z Social network analytics : trend analysis in Twitter Soh, Jophia Yi Wen Sourav Saha Bhowmick School of Computer Science and Engineering DRNTU::Engineering::Computer science and engineering::Software::Software engineering Twitter is one of a popular microblogging site that allows registered user to engage and interact in short messages pertaining to wide variety of topics, not exceeding 140 characters. Alongside other social networking services, Twitter adopt a social model called “following” which allows registered users to follow and receive updates from the registered account they follow, in real-time. As a result, this social model has enabled Twitter to become very efficient in information spreading and propagation. However, with many news, sources and topics discussed on Twitter, it brings about huge drawbacks on the efficient acquisition of important information. It is very time consuming to look through tremendous set of tweets to obtain important information. In this proposed project, trend analysis is performed to acquire latest trends in the most recent collection of tweets to overcome this limitation as a key to facilitate the search of significant information among huge number of tweets. With an existing topic modelling-based recent tweet summarizer, we built beyond and perform trend analysis on the tweets across time and topic to provide the latest emerging trends summarised in topics, to provide quick overview to the users. A collection of 800 most recent English tweets localised with user mentioned keywords were considered and implemented using the most fundamental approach known as hashtag implementation. To further handle the popular hashtags in real-time, we extend the implementation by incorporating Linkify to the group of weighted hashtags. Bachelor of Engineering (Computer Science) 2017-04-24T08:34:35Z 2017-04-24T08:34:35Z 2017 Final Year Project (FYP) http://hdl.handle.net/10356/70453 en Nanyang Technological University 52 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering::Software::Software engineering
spellingShingle DRNTU::Engineering::Computer science and engineering::Software::Software engineering
Soh, Jophia Yi Wen
Social network analytics : trend analysis in Twitter
description Twitter is one of a popular microblogging site that allows registered user to engage and interact in short messages pertaining to wide variety of topics, not exceeding 140 characters. Alongside other social networking services, Twitter adopt a social model called “following” which allows registered users to follow and receive updates from the registered account they follow, in real-time. As a result, this social model has enabled Twitter to become very efficient in information spreading and propagation. However, with many news, sources and topics discussed on Twitter, it brings about huge drawbacks on the efficient acquisition of important information. It is very time consuming to look through tremendous set of tweets to obtain important information. In this proposed project, trend analysis is performed to acquire latest trends in the most recent collection of tweets to overcome this limitation as a key to facilitate the search of significant information among huge number of tweets. With an existing topic modelling-based recent tweet summarizer, we built beyond and perform trend analysis on the tweets across time and topic to provide the latest emerging trends summarised in topics, to provide quick overview to the users. A collection of 800 most recent English tweets localised with user mentioned keywords were considered and implemented using the most fundamental approach known as hashtag implementation. To further handle the popular hashtags in real-time, we extend the implementation by incorporating Linkify to the group of weighted hashtags.
author2 Sourav Saha Bhowmick
author_facet Sourav Saha Bhowmick
Soh, Jophia Yi Wen
format Final Year Project
author Soh, Jophia Yi Wen
author_sort Soh, Jophia Yi Wen
title Social network analytics : trend analysis in Twitter
title_short Social network analytics : trend analysis in Twitter
title_full Social network analytics : trend analysis in Twitter
title_fullStr Social network analytics : trend analysis in Twitter
title_full_unstemmed Social network analytics : trend analysis in Twitter
title_sort social network analytics : trend analysis in twitter
publishDate 2017
url http://hdl.handle.net/10356/70453
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