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Management and analysis of social media data
A case study based on Sina Weibo
Weining Qian
Center for Cloud Computing and Big Data
East China Normal University
wnqian@sei.ecnu.edu.cn
database.ecnu.edu.cn
Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
2 of 53
What is social media?
A group of Internet-based applications that build on the ideological and
technological foundations of Web 2.0, and that allow the creation and
exchange of user-generated content.
Andreas M. Kaplan, Michael Haenlein. ā€œUsers of the world, unite! The
challenges and opportunities of Social Mediaā€. Business Horizons 53(1). 2010
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Why social media?
Sense the world!
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Finantial index and mood on social media
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Finantial index and mood on social media
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Why case study based on Sina Weibo?
ā€¢ ā€œReal-worldā€ data (valuable for universities)
ā€¢ Related to many real applications
ā€¢ (Relatively) easy to get those data
ā€¢ Big data?
ā—¦ Unstructured data
ā—¦ Time evolving data
ā—¦ Fast arriving (if we crawl the data on-line)
ā—¦ Low quality (abbr., smileyes, typos, multi-language, . . . )
ā€¢ Intuition helps (everyone understand social media nowadays!)
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Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
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Data collecting: Distributed crawler
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Data: Gradually updating
Followship network
ā€¢ Seed users: 11 lawyers and opinion leaders and 21 researchers
ā€¢ 2nd level users from seeds: 120,000+ users
ā€¢ 3rd level users from seeds: 1.7+ million users
ā€¢ 4th level users from seeds: 18+ million users (incomplete)
ā€¢ More than 1 billion following relationships
Tweets from 1.6+ million users
ā€¢ From Aug. 2009 to Jun. 2012
ā€¢ 480+ million tweets (about 51.11% of them are retweeted tweets, and
others are original tweets)
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Data: Two dimentions
Timeline Followship network
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Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
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The challenge of modeling
What we expect?
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The challenge of modeling
External events
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The challenge of modeling
Bursts/tipping points
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Modeling
Itā€™s difļ¬cult to model a long-term time-series in
social media
ā€¢ Affected by external events
Is it possible to model the life-cycle of a single
tweet?
To predicate its
ā€¢ retweet path
ā€¢ #retweet
ā€¢ impression
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Various measurements
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0
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1
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2
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#Retweet/#Hashtag
Frequency
#Hashtag
#Retweet
[1,10) [10~100) [100,1000) [1000,)
0
10
20
30
40
50
60
70
80
90
100
#Retweet
ThePercentageofTweet
93.8
5.85
0.65 0.02
7.42
29.4230.5832.76
The Percentage of #Tweet*#Retweet
The Percentage of #Tweet
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The life-cycle of a tweet
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Sigmoid function: S-Curve
F(x) =
N
1 +a Ā·eāˆ’b(xāˆ’c)
0 50 100 150
0
10
20
30
40
50
60
70
80
90
100
x
y
a=100,b=0.2
a=1000,b=0.2
a=100000,b=0.2
a=1000,b=0.1
a=1000,b=0.3
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Modeling tweets popularity with S-Curve
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Bursts of a tweet (and its retweets)
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Tipping points
1. (Ī“(t +Īµ)āˆ’Ī“(t)) > Īŗ
2. (Ī“(t)āˆ’Ī“(t āˆ’Īµ)) < Īŗ
3. (Ī“(t +Īµ)āˆ’Ī“(t)) > Āµ āˆ—(Ī“(t)āˆ’Ī“(t āˆ’Īµ))
4. (Ī“(t +Īµ)āˆ’Ī“(t)) > N/log(N)
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Piece-wise Sigmoid function
F(x) =
ļ£±
ļ£“ļ£“ļ£²
ļ£“ļ£“ļ£³
N1
1 +a0 Ā·eāˆ’b0(xāˆ’c0)
x <= x1
Niāˆ’1 +
Ni āˆ’Niāˆ’1
1 +ai Ā·eāˆ’bi (xāˆ’ci )
xiāˆ’1 < x <= xi ,2 ā‰¤ i ā‰¤ Ī»
(1)
where
Ī»
āˆ‘
i=1
Ni = N. (2)
23 of 53
Result of modeling
0.5 0.55 0.6 0.65 0.7 0.75 0.8 0.85 0.9 0.95 1
0.5
0.55
0.6
0.65
0.7
0.75
0.8
0.85
0.9
0.95
1
R
2
(Single Sāˆ’Curve)
R
2
(MultiSāˆ’Curve)
y=x
24 of 53
What causes a burst in social media?
25 of 53
Intuitive illustration
26 of 53
Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
27 of 53
Schema: Tweets
Table : The microblog Table
Attribute Data Type Description
MID ID Message identiļ¬er
UID ID Authorā€™s user identiļ¬er
TIME DATE/TIME Time that the tweet is posted
CONTENT TEXT Content of the tweet
Table : The retweet Table
Attribute Data Type Description
MID ID Message identiļ¬er of the retweet
REMID ID MID of the tweet that is retweeted
28 of 53
Schema: Content
Table : The mention Table
Attribute Data Type Description
MID ID Message identiļ¬er
UID ID A user identiļ¬er that is mentioned
in the message
Table : The topic Table
Attribute Data Type Description
MID ID Message identiļ¬er
TAG TEXT The hashtag of a topic
Could be extended for links, images, video, etc.
29 of 53
Schema: Users
Table : The user Table
Attribute Data Type Description
UID ID User identiļ¬er
Email TEXT Email of the user
Name TEXT Name of the user
. . . . . . Proļ¬le attributes
Table : The friendlist Table
Attribute Data Type Description
UID ID User identiļ¬er
FRIENDID ID A user that is followed by UID
30 of 53
Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
31 of 53
Queries
Q: Rank tweets appearing in my followeesā€™ timelines according to the number of retweet.
SELECT x.remid FROM microblog,
(SELECT retweet.mid AS mid,retweet.remid AS remid
FROM microblog,retweet
WHERE microblog.mid = retweet.remid) AS x
WHERE microblog.mid = x.mid AND
microblog.uid IN
(SELECT friendID FROM friendList
WHERE uid = "A" OR
uid IN
(SELECT friendID FROM friendList
WHERE uid = "A")) AND
microblog.time BETWEEN TO_DAYS(ā€™YYYY-MM-DDHH:MM:SSā€™) AND
DATE_ADD(ā€™YYYY-MM-DD HH:MM:SSā€™,INTERVAL 1HOUR)
GROUP BY x.remid
ORDER BY COUNT(*)DESC
LIMIT 10;
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Difļ¬culties
Joins of very large tables
ā€¢ self-join of friendList
ā€¢ join of microblog and retweet
33 of 53
Queries
Q: Find the set of people who share the same followee with the speciļ¬ed user.
SELECT f1.uid
FROM friendList AS f1,
(SELECT friendID
FROM friendList
WHERE uid = "A") AS f2
WHERE f1.uid <> "A" AND
f1.friendID = f2.friendID AND
f1.uid <> f2.friendID
GROUP BY f1.uid
ORDER BY COUNT(f1.friendID)DESC
LIMIT 10;
34 of 53
Difļ¬culties
Power-law distribution
ā€¢ The size of results from the inner-subquery may vary a lot!
10
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āˆ’6
10
āˆ’5
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āˆ’4
10
āˆ’3
10
āˆ’2
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āˆ’1
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0
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1
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2
#Followees
Frequency(Normalized)
Twitter
Sina Weibo
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0
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āˆ’6
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10
āˆ’4
10
āˆ’3
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āˆ’2
10
āˆ’1
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0
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2
#Followers
Frequency(Normalized)
Twitter
Sina Weibo
35 of 53
Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
36 of 53
Why a data generator is needed?
ā€¢ Useful in benchmark
ā—¦ For scalability issue
ā—¦ For privacy issue
ā—¦ For diversity issues
ā€¢ Though social media data from different services tend to follow similar
distribution, they are different.
37 of 53
Distribution of real-data vs. generated data
1
10
100
1000
10000
100000
1e+06
1e+07
1e+08
1 10 100 1000 10000
Frequency
Number of Comments per post
SIB
BSMA
1
10
100
1000
10000
100000
1e+06
1 10 100 1000 10000
Frequency
Number of Friends
SIB
BSMA
0
0.05
0.1
0.15
0.2
0 5 10 15 20 25 30
NumberofPost
Day
SIB
BSMA
1
10
100
1000
10000
100000
1e+06
1 10 100 1000 100001000001e+06 1e+07
Frequency
Number of Posts
SIB
BSMA
38 of 53
Outline
Social media
Data
Data collecting
Modeling microblogs
Management
Schema
Queries
Data generator: On-going work
Benchmarking social media data analytical queries
Applications
39 of 53
Measurements
ā€¢ Throughput
ā€¢ Latency
ā€¢ Scalability
40 of 53
Workloads
ā€¢ 19 queries in 3 categories
ā—¦ Social network queries (joins of very large tables)
ā—¦ Timeline queries (order-preserving)
ā—¦ Hotspot queries (skewed data)
41 of 53
Preliminary results
0
500
1000
1500
2000
Q
1
Q
2
Q
3
Q
4
Q
5
Q
8
Q
9
Q
10Q
11Q
12Q
13Q
14Q
15Q
16Q
17Q
19
Througput(ops)
Query
Average Hightest Throughput
0
5000
10000
15000
20000
Q
1
Q
2
Q
3
Q
4
Q
5
Q
8
Q
9
Q
10Q
11Q
12Q
13Q
14Q
15Q
16Q
17Q
19
Latency(ms)
Query
Average Hightest Latency
42 of 53
Preliminary results
1
10
100
1000
10000
100000
1e+06
1e+07
Q
1
Q
2
Q
3
Q
4
Q
5
Q
8
Q
9
Q
10Q
11Q
12Q
13Q
14Q
15Q
16Q
17Q
19
Scalability
Query
Team1
Team2
Team3
Team4
43 of 53
On-going work
BSMA: http://github.com/xiafan68/BSMA
ā€¢ Data generator
ā€¢ Queries related to content of tweets
ā€¢ More queries
ā€¢ Performance testing of more systems
44 of 53
Collective bahavior analysis
What is collective behavior?
Three kinds of actions:
Conforming : actors follow prevailing norms
Deviant : actors violate those norms
Collective behavior : a third form of action, takes place when norms are
absent or unclear, or when they contradict each other
45 of 53
What is collective bahavior?
Four forms of collective behavior
ā€¢ The crowd
ā€¢ The public
ā€¢ The mass
ā€¢ The social movement
46 of 53
Mood analysis
Essentially time series
47 of 53
Mood analysis
Essentially time series
Disasters have strong affect on ā€œdeathā€ mood (up-down-up pattern)
The mood of death is strongly correlated with mood on anxiety and calm
48 of 53
On-going work
A shared dataset of hotspots on Sina Weibo
ā€¢ Events and descriptions
ā€¢ Evolutions of hotspots
ā€¢ Information propagation
ā€¢ Spatial attributes
ā€¢ Usersā€™ involvement
By-products
ā€¢ Spamming detection
ā€¢ Fake IDs
ā€¢ . . .
49 of 53
Spamming?
åˆ›ę„å·„åŠ
冷ē¬‘čƝē²¾é€‰
作äøšęœ¬
团800ē½‘
微博ē»å…øčƭ录
å¾®åšęžē¬‘ęŽ’č”Œę¦œ
ę—¶å°šē»å…øčƭ录
ē”µå½±å·„厂
ęœ€éŸ³ä¹
å…Øēƒēƒ­é—Øę®µå­
å…Øēƒåˆ›ę„ęœē½—
å…Øēƒę—¶å°šęœ€å‰ēŗæ
å…Øēƒå„‡é—»č¶£äŗ‹
ꘟåŗ§ēˆ±ęƒ…001
å…Øēƒēƒ­é—ØęŽ’č”Œę¦œ
čƒ”ę¤’č““č““ē½‘
ꖰęµŖꕰē 
ꖰęµŖē§‘ꊀ
ꖰęµŖē§‘ꊀ
ꖰęµŖē§‘ꊀ
ꖰęµŖē§‘ꊀ
å¤“ę”ę–°é—»
ꖰęµŖč“¢ē»
ä»»åæ—å¼ŗ
å¾®ē¾¤å°åŠ©ę‰‹
黄偄ēæ”
ēŽÆēƒéŸ³ä¹ę¦œ
å½“ę—¶ęˆ‘éœ‡ęƒŠäŗ†
冷ē¬‘čƝē²¾é€‰
č–›č›®å­
徐小平
č–›č›®å­
邓飞
老ꦕ
黄偄ēæ”
č–›č›®å­
ęŽå¼€å¤
č–›č›®å­
ęŽå¼€å¤
č–›č›®å­
č–›č›®å­
č–›č›®å­
ęŽå¼€å¤-2
č¢å²³
50 of 53
Summary
ā€¢ Data collecting/pre-processing is dirty-work
ā—¦ Topic/semantic entity extraction
ā—¦ Mood detection
ā—¦ . . .
ā€¢ Real-life data depict interesting patterns
ā—¦ even with simple exploratory analysis
ā€¢ Modeling is difļ¬cult
ā—¦ yet possible under certain circumstance
ā—¦ Monitoring is possible
ā—¦ Prediction remains an open problem
ā€¢ Building system for analyzing social media data is a challenge
ā€¢ Benchmark is a basis for better understanding social media analytics
51 of 53
Contributed students
ā€¢ MA Haixin
ā€¢ XIA Fan
ā€¢ WEI Jinxian
ā€¢ YU Chengcheng
ā€¢ ZHANG Qunyan
52 of 53
Thanks!

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