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Feature network models for proximity data : statistical inference, model selection, network representations and links with related models

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Feature network models for proximity data : statistical inference,

model selection, network representations and links with related

models

Frank, L.E.

Citation

Frank, L. E. (2006, September 21). Feature network models for proximity data : statistical

inference, model selection, network representations and links with related models.

Retrieved from https://hdl.handle.net/1887/4560

Version:

Not Applicable (or Unknown)

License:

Licence agreement concerning inclusion of doctoral thesis in the

Institutional Repository of the University of Leiden

Downloaded from:

https://hdl.handle.net/1887/4560

(2)

Curriculum vitae

Laurence Emmanuelle Frank werd geboren op 8 september 1969 te Delft. In 1987 beh aalde z ij h et diploma gy mnasium A aan h et S tedelijk G y mnasium te S ch iedam. H ierna v olgde de studie Franse T aal- en Letterkunde aan de U niv ersiteit Leiden die in 1992 afgesloten werd met h et doctoraal ex amen, en in 1993 werd de eerstegraads-bev oegdh eid Frans aan dez elfde univ ersiteit beh aald. V anaf 1994 v olgde de studie P sy ch ologie die in 2 0 0 1 cum laude werd afgerond in de afstudeerrich ting M eth oden en T ech nieken. V an 2 0 0 1 tot 2 0 0 5 was z ij aangesteld als assistent in opleiding aan de afdeling M eth oden en T ech nieken aan de U niv ersiteit Leiden. T h ans is z ij als on-derz oeker v erbonden aan de afdeling M eth oden en T ech nieken v an de U niv ersiteit U trech t waar z ij onderz oek doet naar de analy se v an randomiz ed response data.

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