SlideShare une entreprise Scribd logo
1  sur  36
Social Media Analytics
Muhammad Rifqi Ma’arif
Pusat Studi dan Layanan Analitik Data (PuSLAD)
Fakultas Teknik dan Teknologi Informasi
Universitas Jenderal Achmad Yani Yogyakarta
Social Media
• Currently the internet is a place which people can
• Consume and create content
• Interact wit society
• To think loud, share ideas and informations
• A new way of socializing
• Broadly social media is anything that engages people and start dialog
• A powerfull tools to change the world order
• And so on..
Social Media Platforms
• Blogs
• Microblogs
• Wikis
• Video Sharing
• Document Sharing
• Social Bookmarks
• Podcasts
• Screencasts
• Social Networks
• Currated Q&A
What people do in Social Media?
• Create information/content
• Share information/content
• Express opinion (own post, comments, likes)
• Thus....
• The pulse of society can be found in social media in real-time. Analyzing
social media contents and people interaction can helps us to have better
understanding of current and predict the future.
Social Media Analytics
Social media analytics is the practice of gathering data from blogs and social
media websites, such as Twitter, Facebook, Instagram etc.. and analyze that data
to gather insightfull information.
Example Social Media Analytics Use Case
• Gather customer opinion to support marketing and customer service activities
• Summarizing citizen response to a new policy or citizen polarity in politics
• Monitoring adverse effect of drugs usage
Anatomy of Social Media Data
• Basic Feature
• Time of post creation
• Post Owner
• Enggagement
• Geolocation
• etc....
• Advance Feature
• Entity
• Events
• Sentiment
• Keywords
• etc.....
Types of Analytics
• Exploratory Analytics
• Content Analytics
• Social Network Analytics
Exploratory Analytics
• Post Statistics
• Number of Post
• Trend Post
• Most popular post
• Most popular user/people
• Sentiment Proportion
• Enggagement (Number of comments,
likes, share)
• Demographic Analysis
• And so on...
Exploratory Analytics
Exploratory Analytics
Exploratory Analytics
Exploratory Analytics
Content Analytics
• Word/Hashtag Cloud
• Word/Hashtag Co-occurence Matrix
• Sentiment Analysis
• Topic Modelling
• Topic Stream
• And so on..
Word/Hashtag Cloud
Word/Hashtag Co-occurence
Sentiment Analysis
Sentiment analysis or opinion mining
refers to the application of natural
language processing, computational
linguistics, and text analytics to identify
and extract subjective information in
source materials
• Issues on sentiment analysis
• Context
• Granularity
• Aspect-oriented
• Sarcasm
• Multi sentiment
Topic Modeling
• Is a type of statistical model for discovering the hidden semantic structures in a text
body that occur in a collection of documents.
• Represents as a set of keywords which construct the idea of the text.
• Algorithms: Latent Semantic Analysis (LSA), Latent Dirichelet Analysis (LDA)
LDA Model:
Topic #0: 0.006*"would" + 0.006*"one" + 0.004*"said" + 0.003*"new" + 0.003*"two" + 0.003*"time" + 0.003*"could" + 0.002*"may" + 0.002*"man" + 0.002*"also"
Topic #1: 0.005*"one" + 0.005*"would" + 0.004*"said" + 0.003*"new" + 0.003*"could" + 0.003*"made" + 0.003*"two" + 0.003*"time" + 0.002*"first" + 0.002*"may"
Topic #2: 0.005*"one" + 0.005*"would" + 0.005*"said" + 0.004*"could" + 0.003*"time" + 0.002*"two" + 0.002*"even" + 0.002*"new" + 0.002*"way" + 0.002*"first"
Topic #3: 0.007*"would" + 0.005*"one" + 0.004*"could" + 0.004*"said" + 0.003*"first" + 0.003*"new" + 0.003*"may" + 0.002*"two" + 0.002*"time" + 0.002*"man"
Topic #4: 0.006*"one" + 0.004*"said" + 0.004*"would" + 0.003*"could" + 0.003*"new" + 0.003*"like" + 0.003*"even" + 0.002*"two" + 0.002*"time" + 0.002*"may"
Topic #5: 0.007*"one" + 0.006*"would" + 0.004*"time" + 0.003*"could" + 0.003*"may" + 0.003*"man" + 0.003*"said" + 0.002*"like" + 0.002*"new" + 0.002*"two"
Topic #6: 0.007*"one" + 0.003*"may" + 0.003*"would" + 0.003*"could" + 0.003*"time" + 0.003*"new" + 0.003*"first" + 0.003*"two" + 0.003*"said" + 0.002*"man"
Topic #7: 0.005*"one" + 0.004*"would" + 0.003*"new" + 0.003*"said" + 0.003*"first" + 0.003*"man" + 0.003*"two" + 0.003*"may" + 0.003*"state" + 0.003*"could"
Topic #8: 0.007*"one" + 0.004*"would" + 0.003*"may" + 0.003*"time" + 0.003*"new" + 0.003*"two" + 0.002*"said" + 0.002*"mrs." + 0.002*"many" + 0.002*"also"
Topic #9: 0.007*"would" + 0.006*"one" + 0.004*"said" + 0.004*"could" + 0.003*"new" + 0.003*"like"
Topic Modeling
Topic Modeling
Topic Stream
• Advance version of topic modelling by adding the time dimension
Social Network Analysis
• Social network analysis is a method to analyze
the connections based on interaction across
individuals within community.
• It can be applied across disciplines—there are
social networks, political networks, electrical
networks, transportation networks, and so on.
• Social Network reveals how information/goods/
material transmits, propagate and consumed by
society/community
Social Network Data
• The unit of interest in a network are the combined sets of actors and their relations.
• We represent actors with nodes and relations with lines.
• Edges can represent interactions, flows of information, similarities/affiliations, or social relations
• In general, a relation can be Binary or Valued and Directed or Undirected
a
b
c e
d
Undirected, binary Directed, binary
a
b
c e
d
a
b
c e
d
Undirected, Valued Directed, Valued
a
b
c e
d
1 3
4
21
Network Data Structure
a
b
c e
d
Undirected, binary Directed, binary
a
b
c e
d
a b c d e
a
b
c
d
e
1
1
1 1 1
1 1
a b c d e
a
b
c
d
e
1
1 1
1 1 1
1 1
1 1
a b
b a c
c b d e
d c e
e c d
Adjacency List
a b
b a
b c
c b
c d
c e
d c
d e
e c
e d
Arc List
Social Network Characteristics
• There is cluster of nodes
• A group of individuals with
stronger relation comparing to
those beyond the group
• Node can have a weight (or size)
based on various criteria.
• There is a nodes which more
influential to the others (Centrality)
Centrality Analysis
• At the individual level, one dimension of position in the network can be captured
through centrality.
• Conceptually, centrality is straight forward: we want to identify which nodes are
in the ‘center’ of the network.
• In practice, identifying exactly what we mean by ‘center’ is somewhat
complicated.
• Three basic concept of centrality: Degree, Closeness and Betweeness
Degree Centrality
• A node’s (in-) or (out-)degree is the number of links
that lead into or out of the node
• In an undirected graph they are of course identical
• Often used as measure of a node’s degree of
connectedness and hence also influence and/or
popularity
• Useful in assessing which nodes are central with
respect to spreading information and influencing
others in their immediate ‘neighborhood’
Closeness Centrality
• It is a measure of reach, i.e. The speed with which information
can reach other nodes from a given starting node.
• How fast information can spread from one node to every other
node
Betweeness Centrality
• Shows which nodes are more likely to be in
communication paths between other nodes.
• Also useful in determining points where the
network would break apart (think who
would be cut off if nodes 3 or 5 or node A
would disappear)
• Edge with high beetweness centrality score
are potentially in very powerful positions
Interpretation of Centrality
• What would degree, closeness, and betweenness centrality reveal?
• Degree ⇒ Most friends ⇒ Most popular person
• How many people can this person reach directly?
• Closeness ⇒ Can quickly reach the whole group (directly or indirectly)
• How fast can this person reach everyone in the network?
• Relevant if we want to quickly spread information in the network
• Betweenness ⇒ Power in the transmission of information
• How likely is this person to be the most direct route between two people in the network?
• Relevant if we want to influence communication between groups
Comparing Centrality
• Different measures target different notions of
importance
• In a friendship network, degree centrality would
correspond to who is the most popular kid.
• Closeness centrality would correspond to who is
closest to the rest of the group,. Useful for
spreading information
• Betweenness would tell us about graph “cut
points”, edges whose deletion will cause multiple
connected components
Tools for Social Media Analytics
• Why Tools?
• Large number of
unstructured data
• Group of SMA Tools
• Data collection tools
• Data engineering
• Data analytics
• Data visualization
• And so on...
Type of Tools
• For Programmer
• Prog. Languanges
• Libraries
• For Non Programmer
• Desktop based tools
• Cloud service
Cloud Analytic Service
• Keyhole
• Sprout Social
• Brandwatch
• Sonar Platform
• Drone Emprit
• NolimitID
• ..and many more...
Medi@n Analytics
• An (wanna be) integrated cloud platform for Social
Media Analytics
• Developed by Pusat Studi dan Layanan Analytic
Data (PuSLAD) Universitas Jenderal Achmad Yani
Yogyakarta since 2019.
• The main purpose is to provide a platform for
implementing the results of a research in data
analytic conducted by lecture and/or students.
Medi@n Analytics
ꦩ ꦩ ꦩꦩꦩ ꦩꦩ ꦩꦩ ꦩ

Contenu connexe

Tendances

The Roles of Analytics in Digital Marketing
The Roles of Analytics in Digital MarketingThe Roles of Analytics in Digital Marketing
The Roles of Analytics in Digital MarketingT.S. Lim
 
Social Media Data Collection & Analysis
Social Media Data Collection & AnalysisSocial Media Data Collection & Analysis
Social Media Data Collection & AnalysisScott Sanders
 
Social media mining PPT
Social media mining PPTSocial media mining PPT
Social media mining PPTChhavi Mathur
 
Social Media Analytics Lecture
Social Media Analytics LectureSocial Media Analytics Lecture
Social Media Analytics LectureDr Wasim Ahmed
 
Social Media Monitoring: Presentation on Social Media Monitoring: Why and How
Social Media Monitoring: Presentation on Social Media Monitoring: Why and HowSocial Media Monitoring: Presentation on Social Media Monitoring: Why and How
Social Media Monitoring: Presentation on Social Media Monitoring: Why and HowAhmed Bouzid
 
UNIT-2 SOCIAL MEDIA AND WEB ANALYTICS (KMBN MK05)- by aditi narain.pptx
UNIT-2 SOCIAL  MEDIA  AND  WEB  ANALYTICS (KMBN MK05)- by aditi narain.pptxUNIT-2 SOCIAL  MEDIA  AND  WEB  ANALYTICS (KMBN MK05)- by aditi narain.pptx
UNIT-2 SOCIAL MEDIA AND WEB ANALYTICS (KMBN MK05)- by aditi narain.pptxAshishmishra500698
 
Data Mining: What is Data Mining?
Data Mining: What is Data Mining?Data Mining: What is Data Mining?
Data Mining: What is Data Mining?Seerat Malik
 
Techniques of Data Visualization for Data & Business Analytics
Techniques of Data Visualization for Data & Business AnalyticsTechniques of Data Visualization for Data & Business Analytics
Techniques of Data Visualization for Data & Business AnalyticsMercy Akinseinde
 
Big data and data science overview
Big data and data science overviewBig data and data science overview
Big data and data science overviewColleen Farrelly
 
Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...
Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...
Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...Simplilearn
 
Data Visualization in Data Science
Data Visualization in Data ScienceData Visualization in Data Science
Data Visualization in Data ScienceMaloy Manna, PMP®
 
Importance of Data Analytics
 Importance of Data Analytics Importance of Data Analytics
Importance of Data AnalyticsProduct School
 

Tendances (20)

The Roles of Analytics in Digital Marketing
The Roles of Analytics in Digital MarketingThe Roles of Analytics in Digital Marketing
The Roles of Analytics in Digital Marketing
 
Social Media Data Collection & Analysis
Social Media Data Collection & AnalysisSocial Media Data Collection & Analysis
Social Media Data Collection & Analysis
 
Social media mining PPT
Social media mining PPTSocial media mining PPT
Social media mining PPT
 
Social Media Mining and Analytics
Social Media Mining and AnalyticsSocial Media Mining and Analytics
Social Media Mining and Analytics
 
Social Media Sentiment Analysis
Social Media Sentiment AnalysisSocial Media Sentiment Analysis
Social Media Sentiment Analysis
 
Social Data Mining
Social Data MiningSocial Data Mining
Social Data Mining
 
Social Media Analytics Lecture
Social Media Analytics LectureSocial Media Analytics Lecture
Social Media Analytics Lecture
 
Social media with big data analytics
Social media with big data analyticsSocial media with big data analytics
Social media with big data analytics
 
Social Media Monitoring: Presentation on Social Media Monitoring: Why and How
Social Media Monitoring: Presentation on Social Media Monitoring: Why and HowSocial Media Monitoring: Presentation on Social Media Monitoring: Why and How
Social Media Monitoring: Presentation on Social Media Monitoring: Why and How
 
UNIT-2 SOCIAL MEDIA AND WEB ANALYTICS (KMBN MK05)- by aditi narain.pptx
UNIT-2 SOCIAL  MEDIA  AND  WEB  ANALYTICS (KMBN MK05)- by aditi narain.pptxUNIT-2 SOCIAL  MEDIA  AND  WEB  ANALYTICS (KMBN MK05)- by aditi narain.pptx
UNIT-2 SOCIAL MEDIA AND WEB ANALYTICS (KMBN MK05)- by aditi narain.pptx
 
Data Visualization.pptx
Data Visualization.pptxData Visualization.pptx
Data Visualization.pptx
 
Data Mining: What is Data Mining?
Data Mining: What is Data Mining?Data Mining: What is Data Mining?
Data Mining: What is Data Mining?
 
Social Media Data Analytics
Social Media Data AnalyticsSocial Media Data Analytics
Social Media Data Analytics
 
Techniques of Data Visualization for Data & Business Analytics
Techniques of Data Visualization for Data & Business AnalyticsTechniques of Data Visualization for Data & Business Analytics
Techniques of Data Visualization for Data & Business Analytics
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
Big data and data science overview
Big data and data science overviewBig data and data science overview
Big data and data science overview
 
Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...
Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...
Big Data Analytics | What Is Big Data Analytics? | Big Data Analytics For Beg...
 
What is social media marketing
What is social media marketingWhat is social media marketing
What is social media marketing
 
Data Visualization in Data Science
Data Visualization in Data ScienceData Visualization in Data Science
Data Visualization in Data Science
 
Importance of Data Analytics
 Importance of Data Analytics Importance of Data Analytics
Importance of Data Analytics
 

Similaire à Social Media Analytics

Making More Sense Out of Social Data
Making More Sense Out of Social DataMaking More Sense Out of Social Data
Making More Sense Out of Social DataThe Open University
 
Shared data and the future of libraries
Shared data and the future of librariesShared data and the future of libraries
Shared data and the future of librariesRegan Harper
 
Soccnx10 Man versus Machine – A Story About Embracing Innovation
Soccnx10 Man versus Machine – A Story About Embracing Innovation Soccnx10 Man versus Machine – A Story About Embracing Innovation
Soccnx10 Man versus Machine – A Story About Embracing Innovation Femke Goedhart
 
Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...
Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...
Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...Lauri Eloranta
 
Frontiers of Computational Journalism week 8 - Visualization and Network Anal...
Frontiers of Computational Journalism week 8 - Visualization and Network Anal...Frontiers of Computational Journalism week 8 - Visualization and Network Anal...
Frontiers of Computational Journalism week 8 - Visualization and Network Anal...Jonathan Stray
 
Digital project planning and pedagogy
Digital project planning and pedagogyDigital project planning and pedagogy
Digital project planning and pedagogylibrarianrafia
 
Insights From Social Media
Insights From Social MediaInsights From Social Media
Insights From Social MediaDr Wasim Ahmed
 
Big Data Analytics : A Social Network Approach
Big Data Analytics : A Social Network ApproachBig Data Analytics : A Social Network Approach
Big Data Analytics : A Social Network ApproachAndry Alamsyah
 
Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...
Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...
Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...Douglas Schuler
 
4C13 J.15 Larson "Twitter based discourse community"
4C13 J.15 Larson "Twitter based discourse community"4C13 J.15 Larson "Twitter based discourse community"
4C13 J.15 Larson "Twitter based discourse community"rhetoricked
 
Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...Nicola Osborne
 
Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012CameliaN
 
Mapping Movements: Social movement research and big data: critiques and alter...
Mapping Movements: Social movement research and big data: critiques and alter...Mapping Movements: Social movement research and big data: critiques and alter...
Mapping Movements: Social movement research and big data: critiques and alter...Tim Highfield
 
Twitter data analysis using R
Twitter data analysis using RTwitter data analysis using R
Twitter data analysis using Rsantoshi mangalgi
 
Researching Social Media – Big Data and Social Media Analysis
Researching Social Media – Big Data and Social Media AnalysisResearching Social Media – Big Data and Social Media Analysis
Researching Social Media – Big Data and Social Media AnalysisFarida Vis
 
Advanced Research Investigations for SIU Investigators
Advanced Research Investigations for SIU InvestigatorsAdvanced Research Investigations for SIU Investigators
Advanced Research Investigations for SIU InvestigatorsSloan Carne
 
Digital Contact's big data presentation to the University of Kent
Digital Contact's big data presentation to the University of KentDigital Contact's big data presentation to the University of Kent
Digital Contact's big data presentation to the University of Kentdigitalcontact
 
Data Science-1 (1).ppt
Data Science-1 (1).pptData Science-1 (1).ppt
Data Science-1 (1).pptSanjayAcharaya
 
Data Communities - reusable data in and outside your organization.
Data Communities - reusable data in and outside your organization.Data Communities - reusable data in and outside your organization.
Data Communities - reusable data in and outside your organization.Paul Groth
 

Similaire à Social Media Analytics (20)

Making More Sense Out of Social Data
Making More Sense Out of Social DataMaking More Sense Out of Social Data
Making More Sense Out of Social Data
 
Shared data and the future of libraries
Shared data and the future of librariesShared data and the future of libraries
Shared data and the future of libraries
 
Soccnx10 Man versus Machine – A Story About Embracing Innovation
Soccnx10 Man versus Machine – A Story About Embracing Innovation Soccnx10 Man versus Machine – A Story About Embracing Innovation
Soccnx10 Man versus Machine – A Story About Embracing Innovation
 
Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...
Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...
Big Data and Data Mining - Lecture 3 in Introduction to Computational Social ...
 
Frontiers of Computational Journalism week 8 - Visualization and Network Anal...
Frontiers of Computational Journalism week 8 - Visualization and Network Anal...Frontiers of Computational Journalism week 8 - Visualization and Network Anal...
Frontiers of Computational Journalism week 8 - Visualization and Network Anal...
 
Digital project planning and pedagogy
Digital project planning and pedagogyDigital project planning and pedagogy
Digital project planning and pedagogy
 
Insights From Social Media
Insights From Social MediaInsights From Social Media
Insights From Social Media
 
Big Data Analytics : A Social Network Approach
Big Data Analytics : A Social Network ApproachBig Data Analytics : A Social Network Approach
Big Data Analytics : A Social Network Approach
 
Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...
Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...
Community Informatics for Community Informaticians (keynote at CIRN 2010, Pra...
 
What is Data Science
What is Data ScienceWhat is Data Science
What is Data Science
 
4C13 J.15 Larson "Twitter based discourse community"
4C13 J.15 Larson "Twitter based discourse community"4C13 J.15 Larson "Twitter based discourse community"
4C13 J.15 Larson "Twitter based discourse community"
 
Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...
 
Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012Sylva workshop.gt that camp.2012
Sylva workshop.gt that camp.2012
 
Mapping Movements: Social movement research and big data: critiques and alter...
Mapping Movements: Social movement research and big data: critiques and alter...Mapping Movements: Social movement research and big data: critiques and alter...
Mapping Movements: Social movement research and big data: critiques and alter...
 
Twitter data analysis using R
Twitter data analysis using RTwitter data analysis using R
Twitter data analysis using R
 
Researching Social Media – Big Data and Social Media Analysis
Researching Social Media – Big Data and Social Media AnalysisResearching Social Media – Big Data and Social Media Analysis
Researching Social Media – Big Data and Social Media Analysis
 
Advanced Research Investigations for SIU Investigators
Advanced Research Investigations for SIU InvestigatorsAdvanced Research Investigations for SIU Investigators
Advanced Research Investigations for SIU Investigators
 
Digital Contact's big data presentation to the University of Kent
Digital Contact's big data presentation to the University of KentDigital Contact's big data presentation to the University of Kent
Digital Contact's big data presentation to the University of Kent
 
Data Science-1 (1).ppt
Data Science-1 (1).pptData Science-1 (1).ppt
Data Science-1 (1).ppt
 
Data Communities - reusable data in and outside your organization.
Data Communities - reusable data in and outside your organization.Data Communities - reusable data in and outside your organization.
Data Communities - reusable data in and outside your organization.
 

Plus de Muhammad Rifqi

Market Basket Analisis dengan R
Market Basket Analisis dengan RMarket Basket Analisis dengan R
Market Basket Analisis dengan RMuhammad Rifqi
 
Machine Learning dengan R
Machine Learning dengan RMachine Learning dengan R
Machine Learning dengan RMuhammad Rifqi
 
Visualisasi Data di R dengan ggplot2
Visualisasi Data di R dengan ggplot2Visualisasi Data di R dengan ggplot2
Visualisasi Data di R dengan ggplot2Muhammad Rifqi
 
Data Pribadi di Ruang Siber
Data Pribadi di Ruang SiberData Pribadi di Ruang Siber
Data Pribadi di Ruang SiberMuhammad Rifqi
 
Pengenalan Social Network ANalysis
Pengenalan Social Network ANalysisPengenalan Social Network ANalysis
Pengenalan Social Network ANalysisMuhammad Rifqi
 
Open source stak of big data techs open suse asia
Open source stak of big data techs   open suse asiaOpen source stak of big data techs   open suse asia
Open source stak of big data techs open suse asiaMuhammad Rifqi
 

Plus de Muhammad Rifqi (6)

Market Basket Analisis dengan R
Market Basket Analisis dengan RMarket Basket Analisis dengan R
Market Basket Analisis dengan R
 
Machine Learning dengan R
Machine Learning dengan RMachine Learning dengan R
Machine Learning dengan R
 
Visualisasi Data di R dengan ggplot2
Visualisasi Data di R dengan ggplot2Visualisasi Data di R dengan ggplot2
Visualisasi Data di R dengan ggplot2
 
Data Pribadi di Ruang Siber
Data Pribadi di Ruang SiberData Pribadi di Ruang Siber
Data Pribadi di Ruang Siber
 
Pengenalan Social Network ANalysis
Pengenalan Social Network ANalysisPengenalan Social Network ANalysis
Pengenalan Social Network ANalysis
 
Open source stak of big data techs open suse asia
Open source stak of big data techs   open suse asiaOpen source stak of big data techs   open suse asia
Open source stak of big data techs open suse asia
 

Dernier

Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...gajnagarg
 
Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...
Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...
Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...gajnagarg
 
RESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptx
RESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptxRESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptx
RESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptxronsairoathenadugay
 
Dubai Call Girls Peeing O525547819 Call Girls Dubai
Dubai Call Girls Peeing O525547819 Call Girls DubaiDubai Call Girls Peeing O525547819 Call Girls Dubai
Dubai Call Girls Peeing O525547819 Call Girls Dubaikojalkojal131
 
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...nirzagarg
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabiaahmedjiabur940
 
7. Epi of Chronic respiratory diseases.ppt
7. Epi of Chronic respiratory diseases.ppt7. Epi of Chronic respiratory diseases.ppt
7. Epi of Chronic respiratory diseases.pptibrahimabdi22
 
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...nirzagarg
 
20240412-SmartCityIndex-2024-Full-Report.pdf
20240412-SmartCityIndex-2024-Full-Report.pdf20240412-SmartCityIndex-2024-Full-Report.pdf
20240412-SmartCityIndex-2024-Full-Report.pdfkhraisr
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRajesh Mondal
 
Aspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraAspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraGovindSinghDasila
 
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...HyderabadDolls
 
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With OrangePredicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With OrangeThinkInnovation
 
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...ZurliaSoop
 
Computer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfComputer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfSayantanBiswas37
 
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...nirzagarg
 
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...gajnagarg
 
Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...
Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...
Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...gragchanchal546
 
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...gajnagarg
 

Dernier (20)

Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In bhavnagar [ 7014168258 ] Call Me For Genuine Models...
 
Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...
Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...
Top profile Call Girls In dimapur [ 7014168258 ] Call Me For Genuine Models W...
 
RESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptx
RESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptxRESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptx
RESEARCH-FINAL-DEFENSE-PPT-TEMPLATE.pptx
 
Dubai Call Girls Peeing O525547819 Call Girls Dubai
Dubai Call Girls Peeing O525547819 Call Girls DubaiDubai Call Girls Peeing O525547819 Call Girls Dubai
Dubai Call Girls Peeing O525547819 Call Girls Dubai
 
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
 
7. Epi of Chronic respiratory diseases.ppt
7. Epi of Chronic respiratory diseases.ppt7. Epi of Chronic respiratory diseases.ppt
7. Epi of Chronic respiratory diseases.ppt
 
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
 
20240412-SmartCityIndex-2024-Full-Report.pdf
20240412-SmartCityIndex-2024-Full-Report.pdf20240412-SmartCityIndex-2024-Full-Report.pdf
20240412-SmartCityIndex-2024-Full-Report.pdf
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for Research
 
Aspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraAspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - Almora
 
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
 
Abortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get CytotecAbortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get Cytotec
 
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With OrangePredicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
Predicting HDB Resale Prices - Conducting Linear Regression Analysis With Orange
 
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
Computer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfComputer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdf
 
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
Top profile Call Girls In Bihar Sharif [ 7014168258 ] Call Me For Genuine Mod...
 
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
 
Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...
Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...
Gulbai Tekra * Cheap Call Girls In Ahmedabad Phone No 8005736733 Elite Escort...
 
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
 

Social Media Analytics

  • 1. Social Media Analytics Muhammad Rifqi Ma’arif Pusat Studi dan Layanan Analitik Data (PuSLAD) Fakultas Teknik dan Teknologi Informasi Universitas Jenderal Achmad Yani Yogyakarta
  • 2. Social Media • Currently the internet is a place which people can • Consume and create content • Interact wit society • To think loud, share ideas and informations • A new way of socializing • Broadly social media is anything that engages people and start dialog • A powerfull tools to change the world order • And so on..
  • 3. Social Media Platforms • Blogs • Microblogs • Wikis • Video Sharing • Document Sharing • Social Bookmarks • Podcasts • Screencasts • Social Networks • Currated Q&A
  • 4. What people do in Social Media? • Create information/content • Share information/content • Express opinion (own post, comments, likes) • Thus.... • The pulse of society can be found in social media in real-time. Analyzing social media contents and people interaction can helps us to have better understanding of current and predict the future.
  • 5. Social Media Analytics Social media analytics is the practice of gathering data from blogs and social media websites, such as Twitter, Facebook, Instagram etc.. and analyze that data to gather insightfull information. Example Social Media Analytics Use Case • Gather customer opinion to support marketing and customer service activities • Summarizing citizen response to a new policy or citizen polarity in politics • Monitoring adverse effect of drugs usage
  • 6. Anatomy of Social Media Data • Basic Feature • Time of post creation • Post Owner • Enggagement • Geolocation • etc.... • Advance Feature • Entity • Events • Sentiment • Keywords • etc.....
  • 7. Types of Analytics • Exploratory Analytics • Content Analytics • Social Network Analytics
  • 8. Exploratory Analytics • Post Statistics • Number of Post • Trend Post • Most popular post • Most popular user/people • Sentiment Proportion • Enggagement (Number of comments, likes, share) • Demographic Analysis • And so on...
  • 13. Content Analytics • Word/Hashtag Cloud • Word/Hashtag Co-occurence Matrix • Sentiment Analysis • Topic Modelling • Topic Stream • And so on..
  • 16. Sentiment Analysis Sentiment analysis or opinion mining refers to the application of natural language processing, computational linguistics, and text analytics to identify and extract subjective information in source materials • Issues on sentiment analysis • Context • Granularity • Aspect-oriented • Sarcasm • Multi sentiment
  • 17. Topic Modeling • Is a type of statistical model for discovering the hidden semantic structures in a text body that occur in a collection of documents. • Represents as a set of keywords which construct the idea of the text. • Algorithms: Latent Semantic Analysis (LSA), Latent Dirichelet Analysis (LDA) LDA Model: Topic #0: 0.006*"would" + 0.006*"one" + 0.004*"said" + 0.003*"new" + 0.003*"two" + 0.003*"time" + 0.003*"could" + 0.002*"may" + 0.002*"man" + 0.002*"also" Topic #1: 0.005*"one" + 0.005*"would" + 0.004*"said" + 0.003*"new" + 0.003*"could" + 0.003*"made" + 0.003*"two" + 0.003*"time" + 0.002*"first" + 0.002*"may" Topic #2: 0.005*"one" + 0.005*"would" + 0.005*"said" + 0.004*"could" + 0.003*"time" + 0.002*"two" + 0.002*"even" + 0.002*"new" + 0.002*"way" + 0.002*"first" Topic #3: 0.007*"would" + 0.005*"one" + 0.004*"could" + 0.004*"said" + 0.003*"first" + 0.003*"new" + 0.003*"may" + 0.002*"two" + 0.002*"time" + 0.002*"man" Topic #4: 0.006*"one" + 0.004*"said" + 0.004*"would" + 0.003*"could" + 0.003*"new" + 0.003*"like" + 0.003*"even" + 0.002*"two" + 0.002*"time" + 0.002*"may" Topic #5: 0.007*"one" + 0.006*"would" + 0.004*"time" + 0.003*"could" + 0.003*"may" + 0.003*"man" + 0.003*"said" + 0.002*"like" + 0.002*"new" + 0.002*"two" Topic #6: 0.007*"one" + 0.003*"may" + 0.003*"would" + 0.003*"could" + 0.003*"time" + 0.003*"new" + 0.003*"first" + 0.003*"two" + 0.003*"said" + 0.002*"man" Topic #7: 0.005*"one" + 0.004*"would" + 0.003*"new" + 0.003*"said" + 0.003*"first" + 0.003*"man" + 0.003*"two" + 0.003*"may" + 0.003*"state" + 0.003*"could" Topic #8: 0.007*"one" + 0.004*"would" + 0.003*"may" + 0.003*"time" + 0.003*"new" + 0.003*"two" + 0.002*"said" + 0.002*"mrs." + 0.002*"many" + 0.002*"also" Topic #9: 0.007*"would" + 0.006*"one" + 0.004*"said" + 0.004*"could" + 0.003*"new" + 0.003*"like"
  • 20. Topic Stream • Advance version of topic modelling by adding the time dimension
  • 21. Social Network Analysis • Social network analysis is a method to analyze the connections based on interaction across individuals within community. • It can be applied across disciplines—there are social networks, political networks, electrical networks, transportation networks, and so on. • Social Network reveals how information/goods/ material transmits, propagate and consumed by society/community
  • 22. Social Network Data • The unit of interest in a network are the combined sets of actors and their relations. • We represent actors with nodes and relations with lines. • Edges can represent interactions, flows of information, similarities/affiliations, or social relations • In general, a relation can be Binary or Valued and Directed or Undirected a b c e d Undirected, binary Directed, binary a b c e d a b c e d Undirected, Valued Directed, Valued a b c e d 1 3 4 21
  • 23. Network Data Structure a b c e d Undirected, binary Directed, binary a b c e d a b c d e a b c d e 1 1 1 1 1 1 1 a b c d e a b c d e 1 1 1 1 1 1 1 1 1 1 a b b a c c b d e d c e e c d Adjacency List a b b a b c c b c d c e d c d e e c e d Arc List
  • 24. Social Network Characteristics • There is cluster of nodes • A group of individuals with stronger relation comparing to those beyond the group • Node can have a weight (or size) based on various criteria. • There is a nodes which more influential to the others (Centrality)
  • 25. Centrality Analysis • At the individual level, one dimension of position in the network can be captured through centrality. • Conceptually, centrality is straight forward: we want to identify which nodes are in the ‘center’ of the network. • In practice, identifying exactly what we mean by ‘center’ is somewhat complicated. • Three basic concept of centrality: Degree, Closeness and Betweeness
  • 26. Degree Centrality • A node’s (in-) or (out-)degree is the number of links that lead into or out of the node • In an undirected graph they are of course identical • Often used as measure of a node’s degree of connectedness and hence also influence and/or popularity • Useful in assessing which nodes are central with respect to spreading information and influencing others in their immediate ‘neighborhood’
  • 27. Closeness Centrality • It is a measure of reach, i.e. The speed with which information can reach other nodes from a given starting node. • How fast information can spread from one node to every other node
  • 28. Betweeness Centrality • Shows which nodes are more likely to be in communication paths between other nodes. • Also useful in determining points where the network would break apart (think who would be cut off if nodes 3 or 5 or node A would disappear) • Edge with high beetweness centrality score are potentially in very powerful positions
  • 29. Interpretation of Centrality • What would degree, closeness, and betweenness centrality reveal? • Degree ⇒ Most friends ⇒ Most popular person • How many people can this person reach directly? • Closeness ⇒ Can quickly reach the whole group (directly or indirectly) • How fast can this person reach everyone in the network? • Relevant if we want to quickly spread information in the network • Betweenness ⇒ Power in the transmission of information • How likely is this person to be the most direct route between two people in the network? • Relevant if we want to influence communication between groups
  • 30. Comparing Centrality • Different measures target different notions of importance • In a friendship network, degree centrality would correspond to who is the most popular kid. • Closeness centrality would correspond to who is closest to the rest of the group,. Useful for spreading information • Betweenness would tell us about graph “cut points”, edges whose deletion will cause multiple connected components
  • 31. Tools for Social Media Analytics • Why Tools? • Large number of unstructured data • Group of SMA Tools • Data collection tools • Data engineering • Data analytics • Data visualization • And so on...
  • 32. Type of Tools • For Programmer • Prog. Languanges • Libraries • For Non Programmer • Desktop based tools • Cloud service
  • 33. Cloud Analytic Service • Keyhole • Sprout Social • Brandwatch • Sonar Platform • Drone Emprit • NolimitID • ..and many more...
  • 34. Medi@n Analytics • An (wanna be) integrated cloud platform for Social Media Analytics • Developed by Pusat Studi dan Layanan Analytic Data (PuSLAD) Universitas Jenderal Achmad Yani Yogyakarta since 2019. • The main purpose is to provide a platform for implementing the results of a research in data analytic conducted by lecture and/or students.
  • 36. ꦩ ꦩ ꦩꦩꦩ ꦩꦩ ꦩꦩ ꦩ