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Social Networks 101 P ROF. J ASON H ARTLINE AND P ROF. N ICOLE I MMORLICA
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Lecture Six: The mathematics of decentralized search
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Small world phenomenon Milgram’s experiment (1960s). Ask someone to pass a letter to another person via friends knowing only the name, address, and occupation of the target.
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How to route Problem. How can I get this message from me to the far-away target? Solution. Pass message to a friend. closer (sub)
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Time for
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Scales of resolution Each new scale doubles distance from the center.
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Long-range links Suppose each person has a long-range friend in each scale of resolution.
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How to route Algorithm. Pass the message to your farthest friend that is to the left of the target.
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Trace of route
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Analysis old dist. 1242j2j 2 j+1 new dist.
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Distance is cut in half every step!
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Analysis 1.Original distance is ? 2.Distance is cut in half every step (at least). 3.Number of steps is ? at most n. at most log n.
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And in real life …
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Strength of weak ties Long-range links are often casual acquaintances, … but are very important for search and other network phenomena
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Where do the best job leads come from: your close friends or your acquaintances?
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Job search Granovetter: Most people learn about jobs through personal friends, who are mere acquaintances!
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Weak ties Idea. Weak ties are likely to link distant parts of the network and so are particularly well- suited to information flow.
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Social network structure Which is more likely?
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How will this network evolve?
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Triadic Closure: If two nodes have common neighbor, there is an increased likelihood that an edge between them forms.
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Explaining triadic closure 1.Opportunity. If you spend a lot of time with your best friend and your girlfriend, there is an increased chance they will meet.
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Explaining triadic closure 2.Incentive. If your best friend hates your girlfriend, it stresses both relationships.
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Explaining triadic closure 3.Homophily. If you have things in common with both your best friend and your girlfriend, they have things in common too.
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Does this happen in real graphs?
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Definition: The clustering coefficient of a node v is the fraction of pairs of v’s friends that are connected to each other by edges. Clustering Coefficient = 1/2 The higher the clustering coefficient of a node, the more strongly triadic closure is acting on it
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Collaboration graph Clustering coefficient = 0.14 Density of edges = 0.000008
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Bridges An edge is a bridge if deleting it would cause its endpoints to lie in different components
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Local bridges An edge is a local bridge if its endpoints have no common friends
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Weak Versus Strong Ties
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Definition: Node v satisfies the Strong Triadic Closure if, for any two nodes u and w to which it has strong ties, there is an edge between u and w (which can be either weak or strong) This graph satisfies the strong triadic closure
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Claim: If node v satisfies the Strong Triadic Closure and is involved in at least two strong ties, then any local bridge it is involved in must be a weak tie Argument “by contradiction”: v u Suppose edge v-u is a local bridge and it is a strong tie w Then u-w must exist because of Strong Triadic Closure But then v-u is not a bridge
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Conclusion Local bridges are necessarily weak ties. Structural explanation as to why job information comes from acquaintances.
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Next time Structural holes and balance
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