measurement and analysis of online social networks

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Measurement and Analysis of Online Social Networks By Alan Mislove, Massimiliano Marcon, Krishna P. Gummadi, Peter Druschel, Bobby Bhattacharjee Attacked by Ionut Trestian

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Measurement and Analysis of Online Social Networks. By Alan Mislove, Massimiliano Marcon, Krishna P. Gummadi, Peter Druschel, Bobby Bhattacharjee Attacked by Ionut Trestian. Goals of the paper (1). Understanding social graphs for 2 things: Improving current systems Designing new applications - PowerPoint PPT Presentation

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Page 1: Measurement and Analysis of Online Social Networks

Measurement and Analysis of Online Social

NetworksBy Alan Mislove, Massimiliano Marcon, Krishna P. Gummadi,

Peter Druschel, Bobby Bhattacharjee

Attacked by Ionut Trestian

Page 2: Measurement and Analysis of Online Social Networks

Goals of the paper (1)

• Understanding social graphs for 2 things:

– Improving current systems

– Designing new applications

• Confirm properties of online social networks (e.g. power law, small world, scale-free)

Never happenedNever happened

Even the authors acknowledge that it has been shown in previous

studies

Page 3: Measurement and Analysis of Online Social Networks

Goals of the paper (2)

• Detecting trusted or influential users

• Mitigate email spam

• Improve Internet search

• Defend against Sybil attacks

?These are awesome goals, I agree.

Why don’t you spend your time actually tackling them?

Page 4: Measurement and Analysis of Online Social Networks

Goals of the paper (3)

• Large scale?

– If showing the same thing for a larger number of people is your main contribution then you could have written your paper in just a few lines.

• More social networks?

Page 5: Measurement and Analysis of Online Social Networks

More social networks ?

• How about networks with stronger identity enforcements?

• The networks that you have a strong user population from are mostly content based (e.g. YouTube, LiveJournal, Flickr)

(only 11% from Orkut)

Page 6: Measurement and Analysis of Online Social Networks

Paper results (1)

• Symmetric links

– 62.0% Flickr

– 73.5% LiveJournal

– 100.0% Orkut

– 79.1% YouTube

High degree of link symmetry

Basically means that if you are friend with someone he’s a friend with you …

Page 7: Measurement and Analysis of Online Social Networks

Paper results (2)

Distributions of node indegree and outdegree are very similar

Isn’t this a clear consequence of the high link symmetry ?

Page 8: Measurement and Analysis of Online Social Networks

Paper results (3)

Actually most results seem to be a consequence of the high link

symmetry property

Page 9: Measurement and Analysis of Online Social Networks

Six degrees of separation (1)

• Classical result by Stanley Milgram

• Showed that any two individuals are separated by an average of six acquaintances

• Another not so well known result is that most users are connected through a very small core of influential users – the present paper calls them critical

Page 10: Measurement and Analysis of Online Social Networks

Six degrees of separation (2)

• In the real world these hubs are real people

• In a social network they just represent bits stored on a hard drive

101101101100000100101000101010101010000

• If you can mess with the bits that define a hub-type user you can mess with any of them

• How are these critical?

Page 11: Measurement and Analysis of Online Social Networks

Some final points

• This study in no way seems to capture the actual dynamics of Social Networks

• You actually note that you observed a big difference between datasets collected at close times (two months)

• Even your future work on Ostra on leveraging thrust uses a not so suitable dataset that you acknowledge.

Page 12: Measurement and Analysis of Online Social Networks

Conclusions

• Your paper talks about random graphs

• The whole paper seems random !

• Findings seem obvious and you acknowledge that they have been previously reported

• It seems more useful that you would spend your time tackling the goals - mitigating email spam, improving Internet search defending against Sybil attacks