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Social and Economic Networks Matthew O. Jackson Copyright: Matthew O. Jackson 2014 Please do not post or distribute without permission.

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Matthew O. Jackson, Stanford University Social and Economic Networks: Backgound SI 2014

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Page 1: Jackson nber-slides2014 lecture1

Social'and'Economic'Networks'

!!!!!!!

Matthew O. Jackson Copyright: Matthew O. Jackson 2014 Please do not post or distribute without permission.

Page 2: Jackson nber-slides2014 lecture1

Lecture'1'Social'and'Economic'

Networks:'Background'

!!!!!!!

Matthew O. Jackson NBER July 22, 2014 www.stanford.edu\~jacksonm\Jackson-NBER-slides2014.pdf

Page 3: Jackson nber-slides2014 lecture1

Lecture'1'

•  Crash!course!in!some!basic!social!network!background!

Page 4: Jackson nber-slides2014 lecture1

Why'Study'Networks?'•  Many'economic,'poli@cal,'and'social'interac@ons'are'shaped'by'the'local'

structure'of'rela@onships:!–  trade!of!goods!and!services,!most!markets!are!not!centralized!…!–  sharing!of!informa<on,!favors,!risk,!...!–  transmission!of!viruses,!opinions...!–  access!to!info!about!jobs...!–  choices!of!behavior,!educa<on,!new!technologies,...!–  poli<cal!alliances,!trade!alliances…!

•  Social'networks'influence'behavior'–  crime,!employment,!human!capital,!vo<ng,!product!adop<on,!…!–  networks!exhibit'heterogeneity,'but'have'underlying'structures'that'

we'can'measure'and'model'and'use'to'understand'implica8ons'for'behavior,'welfare,'and'policy'

•  Pure'interest'in'social'structure'–  understand!social!network!structure!

Page 5: Jackson nber-slides2014 lecture1

Synthesize'•  Many!literatures!deal!with!networks!

– Sociology!– Economics!– Computer!Science!– Sta<s<cal!Physics!– Math!(random!graph)...!

•  What!have!we!learned?!•  What!is!the!state!of!the!art?!•  What!are!important!areas!for!future!research?!

Page 6: Jackson nber-slides2014 lecture1

Four'parts:'

•  Background,!basics,!some!measures,!

•  Peer!effects,!iden<fica<on!!•  Diffusion,!more!on!iden<fica<on,!es<ma<on!

•  Transmission!of!shocks…!

Page 7: Jackson nber-slides2014 lecture1

A'Few'Examples'of'Networks'

•  Idea!of!some!data!

•  View!of!a!few!applica<ons!

•  Preview!some!ques<ons!

Page 8: Jackson nber-slides2014 lecture1

Examples!of!Social!and!Economic!Networks!

ACCIAIUOL

ALBIZZI

BARBADORI

BISCHERI

CASTELLAN

GINORI

GUADAGNI

LAMBERTES

MEDICI

PAZZI

PERUZZI

PUCCI

RIDOLFI

SALVIATI

STROZZI

TORNABUON

Padgett’s Data Florentine Marriages, 1430’s

Page 9: Jackson nber-slides2014 lecture1

Bearman, Moody, and Stovel’s High School Romance Data

Page 10: Jackson nber-slides2014 lecture1

Military'Alliances'2000'

S.A.

EUR

N.A.

Mid.E

E.EUR

AFR1

AFR2 Jackson-Nei 2014

CHN PRK

CUB

JPN,ROK,PHL

Page 11: Jackson nber-slides2014 lecture1

Fedwire!Interbank!payments,!nodes!accoun<ng!for!75%!of!total,!Soromaki!et!al!(2007),!25!nodes!are!completely!connected!!

2012 largest banks in order: JPMorganChase B.of A. Citigroup W.fargo Goldman Metlife MorganSt.

Page 12: Jackson nber-slides2014 lecture1

The'Challenge:'•  How!many!networks!on!just!20!nodes?!

•  Person!1!could!have!19!possible!links,!person!2!could!have!18!not!coun<ng!1,!!....!!!total!=!190!

•  So!190!possible!links,!!each!could!either!be!present!or!not,!!!so!2!x!2!x!2!...!190!<mes!=!2190 networks!

•  Atoms in the universe: somewhere between 2158 and 2246

Page 13: Jackson nber-slides2014 lecture1

Simplifying'the'Complexity'•  Global!pa_erns!of!networks!

– path!lengths!– degree!distribu<ons...!

•  Segrega<on!Pa_erns:!node!types!and!homophily!•  Local!Pa_erns!

– Clustering!– Support…!

•  Posi<ons!in!networks!– neighborhoods!– Centrality,!!influence...!

Page 14: Jackson nber-slides2014 lecture1

Simplifying'the'Complexity'•  Global!pa_erns!of!networks!

– path!lengths!– degree!distribu<ons...!

•  Segrega<on!Pa_erns:!node!types!and!homophily!•  Local!Pa_erns!

– Clustering!– Support…!

•  Posi<ons!in!networks!– neighborhoods!– Centrality,!!influence...!

Page 15: Jackson nber-slides2014 lecture1

Represen@ng'Networks'

•  N={1,…,n}!!!!nodes,!ver<ces,!players!

•  g�!{0,1}n×n!!(or!!!g!�![0,1]n×n)!!!!!!rela<onships!

•  gij!>!0!!indicates!a!link!or!edge!between!i!and!j!!•  Network!(N,g)!

Page 16: Jackson nber-slides2014 lecture1

Paths,!Geodesics...!!

4

1

3 2 6

7

5

Path from 1 to 7

4

1

3 2 6

7

5

Geodesic: shortest Path from 1 to 7

Page 17: Jackson nber-slides2014 lecture1

Measures:'

•  Diameter!–!largest!geodesic!!–  if!unconnected,!of!largest!component...!

•  Average!path!length!(less!prone!to!outliers)!

•  Affects'speed'of'diffusion,'contagion...'

Page 18: Jackson nber-slides2014 lecture1

Small!average!path!length!and!diameter!

•  Milgram!(1967)!le_er!experiments!!– median!5!for!the!25%!that!made!it!!

•  CokAuthorship!studies!– Grossman!(1999)!Math!mean!7.6,!max!27,!!– Newman!(2001)!Physics!mean!5.9,!max!20!– Goyal!et!al!(2004)!Economics!mean!9.5,!max!29!

•  Facebook!– Ugander!et!al!(2011)!–!mean!4.7!(99.9%!of!720M!pages)!

Page 19: Jackson nber-slides2014 lecture1

Intui@on'Small'Distances:'

!'''''''''''''''''!''''''''''''''

1 step: Reach d nodes,

Easy Calculation - Cayley Tree: each node besides leaves has d links

Page 20: Jackson nber-slides2014 lecture1

Ideas:'

!'''''''''''''''''!''''''''''''''

1 step: Reach d nodes, then d(d-1),

Page 21: Jackson nber-slides2014 lecture1

Ideas:'

!'''''''''''''''''!''''''''''''''

1 step: Reach d nodes, then d(d-1), then d(d-1)2,

Page 22: Jackson nber-slides2014 lecture1

•  Moving!out'l 'links!from!root!in!each!direc<on!reaches!!d!+!d(dk1)!+!....!!d(dk1)!l k1!!nodes!

•  This!is!!d((dk1)!l !k1)/(dk2)!!nodes!!or!roughly!(dk1)'l '

•  To!reach!nk1,!need!roughly!(dk1)'l '=!nk1!!!!or!!

•  l !=!log(nk1)/log(dk1)!~!log(n)/log(d)!

Page 23: Jackson nber-slides2014 lecture1

Same'for'Random'Graphs'

Theorem(s):!!For!many!classes!of!large!random!graphs!average!distance!and!max!distance!are!propor<onal!to!log(n)/!log!(E(d)).!!!!![ErgoskRenyi!(1959,!1960),!ChungkLu!(2002),!Jackson!(2008b)]!

Page 24: Jackson nber-slides2014 lecture1

0!

1!

2!

3!

4!

5!

6!

7!

0! 0.5! 1! 1.5! 2! 2.5! 3! 3.5! 4! 4.5! 5!

84'High'Schools'–'Ad'Health'

log(n)/log(E[d])

Avg Shortest Path

Page 25: Jackson nber-slides2014 lecture1

Small'Worlds/Six'Degrees'of'Separa@on'

•  n!=!6.7!billion!(world!popula<on)!

•  d!=!50!(friends,!rela<ves...)!

•  log(n)/log(d)!is!about!6!!!!!!

Page 26: Jackson nber-slides2014 lecture1

Neighborhood''and'Degree'

•  Neighborhood:!Ni(g)!=!{!j!|!ij!in!g!}!!!!!!!!(conven<on!ii!not!in!g!)!

•  Degree:!!!di(g)!=!#!Ni(g)!

•  How!is!Degree!distributed!in!a!network?!

Page 27: Jackson nber-slides2014 lecture1

Degree'Distribu@ons'

•  Average!degree!tells!only!part!of!the!story:!

Page 28: Jackson nber-slides2014 lecture1

Coauthor!versus!Romance!

Prob given neighbor has degree Green – romance Red - coauthor

Page 29: Jackson nber-slides2014 lecture1

a=.38, R2=.98

a=1, R2=.99 a=.59, R2=.94

a=1, R2=.94

a=.36, R2=.97 a=.56, R2=.99

Page 30: Jackson nber-slides2014 lecture1

Simplifying'the'Complexity'•  Global!pa_erns!of!networks!

– path!lengths!– degree!distribu<ons...!

•  Segrega<on!Pa_erns:!node!types!and!homophily!•  Local!Pa_erns!

– Clustering!– Support…!

•  Posi<ons!in!networks!– neighborhoods!– Centrality,!!influence...!

Page 31: Jackson nber-slides2014 lecture1

Homophily:'

``Birds!of!a!Feather!Flock!Together’’!k!Philemon!Holland!(1600!!k!``As!commonly!birds!of!a!feather!will!flye!together’’)!

!Effects:''heterogeneity'of'behavior,'beliefs,'culture;'peer'effects'(endogeneity!!);'poverty'traps,'...'

•  age,!race,!gender,!religion,!profession….!!

–  Lazarsfeld!and!Merton!(1954)!``Homophily’’!!–  Shrum!et!al!(gender,!ethnic,!1988…),!Blau!(professional!1974,!1977),!Marsden!(variety,!1987,!1988),!Moody!(grade,!racial,!2001…),!McPherson!(variety,1991…)…!!

Page 32: Jackson nber-slides2014 lecture1

Blue: Blacks Reds: Hispanics Yellow: Whites White: Other

Currarini, Jackson, Pin 09, 10

Page 33: Jackson nber-slides2014 lecture1

Adolescent'Health,''High'School'in'US:'

Percent: 52 38 5 5

White Black Hispanic Other

White 86 7 47 74

Black 4 85 46 13

Hispanic 4 6 2 4

Other 6 2 5 9

100 100 100 100

Page 34: Jackson nber-slides2014 lecture1

“strong friendships” cross group links less than half as frequent Jackson (07)

Blue: Black Reds: Hispanic Yellow: White Pink: Other Light Blue: Missing

Page 35: Jackson nber-slides2014 lecture1

Red=General/OBC!Blue=SC/ST!!!!!!!!!!V26!KeroRiceGo!!

Pcross= .006 Pwithin=.089

Jackson 2014

Page 36: Jackson nber-slides2014 lecture1

Lucioni 2013 weighted – number of same votes (at least 100)

US Senate Co-Votes 1990

Page 37: Jackson nber-slides2014 lecture1

Lucioni 2013 weighted – number of same votes (at least 100)

US Senate Co-Votes 2000

Page 38: Jackson nber-slides2014 lecture1

Lucioni 2013 weighted – number of same votes (at least 100)

US Senate Co-Votes 2010

Page 39: Jackson nber-slides2014 lecture1

Simplifying'the'Complexity'•  Global!pa_erns!of!networks!

– path!lengths!– degree!distribu<ons...!

•  Segrega<on!Pa_erns:!node!types!and!homophily!•  Local!Pa_erns!

– Clustering!– Support…!

•  Posi<ons!in!networks!– neighborhoods!– Centrality,!!influence...!

Page 40: Jackson nber-slides2014 lecture1

Influence/Centrality/Power'

•  Economists!care!about!networks!because!of!externali<es:!!interac<ons!between!nodes!

•  Heterogeneity!of!nodes’!influence!not!just!due!to!characteris<cs,!but!also!due!to!network!posi<on!

•  How!to!capture!this?!!!Depends!on!nature!of!interac<on...!

Page 41: Jackson nber-slides2014 lecture1

Degree'Centrality'

•  How!``connected’’!is!a!node?!

•  degree!captures!connectedness!

•  normalize!by!nk1!!k!!most!possible!

Page 42: Jackson nber-slides2014 lecture1

Degree'Centrality'

ACCIAIUOL

ALBIZZI

BARBADORI

BISCHERI

CASTELLAN

GINORI

GUADAGNI

LAMBERTES

MEDICI

PAZZI

PERUZZI

PUCCI

RIDOLFI

SALVIATI

STROZZI

TORNABUON

Padgett’s Data Florentine Marriages, 1430’s

Medici = 6 Strozzi = 4 Guadagni = 4

Page 43: Jackson nber-slides2014 lecture1

Degree'Centrality?'

•  More!reach!if!connected!to!a!6!and!7!than!a!2!and!2?!

1

1

6 2 2

2

2 2

4

2

1

1 1

1 1

7 1

1

Page 44: Jackson nber-slides2014 lecture1

Another'Centrality'

•  Centrality!propor<onal!to!the!sum!of!neighbors’!centrali<es!

!!!!!!Ci!!!propor<onal!to!∑j:!friend!of!i!!Cj!!!!!More!connec<ons!ma_er,!but!also!accounts!for!how!central!they!are!!

Page 45: Jackson nber-slides2014 lecture1

``Eigenvector'Centrality’’'

•  Centrality!is!propor<onal!to!the!sum!of!neighbors’!centrali<es!

!!!!!!Ci!!!propor<onal!to!!∑j:!friend!of!i!!Cj!!!!!!!!!!!!!!!!!!!!!aCi!=!∑j!gij!Cj!

Page 46: Jackson nber-slides2014 lecture1

Centrality'

•  Concepts!related!to!eigenvector!centrality:!

•  Google!page!rank:!!!score!of!a!page!is!propor<onal!to!the!sum!of!the!scores!of!pages!linked!to!it!

•  Random!surfer!model:!!start!at!some!page!on!the!web,!randomly!pick!a!link,!follow!it,!repeat...!

Page 47: Jackson nber-slides2014 lecture1

Eigenvector'Centrality'

!!!!Now!dis<nguishes!more!``influen<al’’!nodes!!!!!!!(eval!2.9!so!prop!to!1/2.9!C!neighbors)!

.17

.17

.50 .31 .21

.17

.16 .11

.36

.25

.17

.13 .13

.13 .13

.39 .13

.13

Page 48: Jackson nber-slides2014 lecture1

Eigenvector'Centrality'

ACCIAIUOL

ALBIZZI

BARBADORI

BISCHERI

CASTELLAN

GINORI

GUADAGNI

LAMBERTES

MEDICI

PAZZI

PERUZZI

PUCCI

RIDOLFI

SALVIATI

STROZZI

TORNABUON

Padgett’s Data Florentine Marriages, 1430’s

Medici = .430 Strozzi = .356 Guadagni = .289 Ridolfi=.341 Tornabuon=.326

Page 49: Jackson nber-slides2014 lecture1

Betweenness'(Freeman)'Centrality'

•  P(i,j)!number!of!geodesics!between!i!and!j!•  Pk(i,j)!!!number!of!geodesics!between!i!and!j!that!k!lies!on!

•  ∑i,j≠k!![Pk(i,j)/!P(i,j)]!/![(nk1)(nk2)/2]!

Page 50: Jackson nber-slides2014 lecture1

Betweenness'Centrality'

ACCIAIUOL

ALBIZZI

BARBADORI

BISCHERI

CASTELLAN

GINORI

GUADAGNI

LAMBERTES

MEDICI

PAZZI

PERUZZI

PUCCI

RIDOLFI

SALVIATI

STROZZI

TORNABUON

Padgett’s Data Florentine Marriages, 1430’s

Medici .522

Guadagni .255 Strozzi .104

Page 51: Jackson nber-slides2014 lecture1

Centrality,'Four'different'things'to'measure:'

•  Degree!–!connectedness!

•  Influence,!Pres<ge,!Eigenvectors!–!``not!what!you!know,!but!who!you!know..’’!

•  Betweenness!–!importance!as!an!intermediary,!connector!

•  Closeness,!Decay!–!ease!of!reaching!other!nodes!

Page 52: Jackson nber-slides2014 lecture1

Applica@on:'Centrality'affects'diffusion'

•  Injection points:

•  How does centrality of first `infected/informed’ correlate with eventual diffusion?

•  Which centrality measures are predictive?

Page 53: Jackson nber-slides2014 lecture1

BCDJ'2013,'Diffusion'of'Microfinance'

•  75!rural!villages!in!Karnataka,!!rela<vely!isolated!from!microfinance!ini<ally!

•  BSS!entered!43!of!them!and!offered!microfinance!

•  We!surveyed!villages!before!entry,!observed!network!structure!and!various!demographics!

•  Tracked!microfinance!par<cipa<on!over!<me!

Page 54: Jackson nber-slides2014 lecture1

Background'

•  Microfinance!par<cipa<on!varies!widely!even!in!otherwise!similar!villages!•  Near!0!in!some!places!(7%!min!in!our!data)!•  Near!1/2!in!others!(44%!max!in!our!data)!

•  Why?!

•  Word!of!mouth!is!essen<al!in!ge|ng!news!out!–!How!does!it!work/not?!

Page 55: Jackson nber-slides2014 lecture1

Karnataka

Page 56: Jackson nber-slides2014 lecture1

•  !``Favor’’!Networks:!!–  both!borrow!and!lend!money!!–  both!borrow!and!lend!kerokrice!

•  ``Social’’!Networks:!!–  both!visit!come!and!go!!–  friends!(talk!together!most)!

•  Others!(temple,!medical!help…)!

Background:'75'Indian'Villages'–'Networks'

Borrow:

Page 57: Jackson nber-slides2014 lecture1

Borrow:!

Page 58: Jackson nber-slides2014 lecture1

•  !!

Page 59: Jackson nber-slides2014 lecture1

•  !!

Page 60: Jackson nber-slides2014 lecture1

Centrality'and'diffusion'

•  Examine!how!centrality!of!``injec<on!points’’!correlates!with!eventual!diffusion!of!microfinance!

•  First!up,!!degree!centrality!

Page 61: Jackson nber-slides2014 lecture1
Page 62: Jackson nber-slides2014 lecture1

Hypothesis'Revised'

•  In!villages!where!first!contacted!people!have!higher!eigenvector!centrality,!there!should!be!more!diffusion!

Page 63: Jackson nber-slides2014 lecture1

.1.2

.3.4

.5

.04 .06 .08 .1 .12Average eigenvector centrality of leaders

Microfinance take-up rate (non-leader households) Fitted values

Page 64: Jackson nber-slides2014 lecture1

Regress!MF!on!!

Centrality:!!Eigen' 1.723*'

(.984)'Degree' .177'

(.118)'Closeness' .804'

(.481)'Bonacich' .024'

(.030)'Between' .046'

(.032)'Obs' 43' 43' 43' 43' 43'

Rhsquare' .324' .314' .309' .278' .301'

Covariates: numHH, SHG, Savings, fracGM

Page 65: Jackson nber-slides2014 lecture1

!MF!Centrality:!!

DC' .429***'(.127)'

Eigen' 1.723*'(.984)'

Degree' .177'(.118)'

Closeness' .804'(.481)'

Bonacich' .024'(.030)'

Between' .046'(.032)'

Obs' 43' 43' 43' 43' 43' 43'Rhsquare' .470' .324' .314' .309' .278' .301'

Covariates: numHH, SHG, Savings, fracGM

Page 66: Jackson nber-slides2014 lecture1

Summary'so'far:'•  Networks!are!prevalent!and!important!in!many!interac<ons!(labor!markets,!crime,!garment!industry,!risk!sharing...)!

•  Although!complex,!social!networks!have!iden<fiable!characteris<cs:!–  ``small’’!average!and!maximum!path!length!–  degree!distribu<ons!that!exhibit!different!shapes!–  homophily!–!strong!tendency!to!associate!with!own!type!–  centrality!measures!can!capture!node!influence!

Page 67: Jackson nber-slides2014 lecture1

Diffusion'Centrality:'DCi!(p,T)'

•  How!many!nodes!end!up!informed!if:!

•  !i!is!ini<ally!informed,!•  each!informed!node!tells!each!of!its!neighbors!with!prob!p!in!each!period,!

•  run!for!T!periods?!