Biography:Cosma Shalizi

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Short description: American physicist and statistician
Cosma Shalizi
Cosma Shalizi 2.jpg
Cosma Rohilla Shalizi
Born (1974-02-28) February 28, 1974 (age 50)
Boston, United States
NationalityAmerican
Alma materUniversity of California, Berkeley
University of Wisconsin–Madison
Known forCSSR algorithm
Scientific career
FieldsPhysics, Statistics
InstitutionsCarnegie Mellon University
Santa Fe Institute
University of Michigan
Doctoral advisorJames P. Crutchfield

Cosma Rohilla Shalizi (born February 28, 1974) is an associate professor in the Department of Statistics at Carnegie Mellon University in Pittsburgh.

Life

Cosma Rohilla Shalizi is of Indian Tamil, Afghan (Rohilla) and Italian heritage and was born in Boston, where he lived for the first two years of his life. He grew up in Bethesda, Maryland.[1]

In 1990, he was accepted as a Chancellor's Scholar at the University of California, Berkeley, and completed a bachelor's degree in Physics. Subsequently, he attended the University of Wisconsin–Madison where he received a doctorate in physics in May 2001. From 1998 to 2002, he worked at the Santa Fe Institute, in the Evolving Cellular Automata Project and the Computation, Dynamics and Inference group. From 2002 to 2005, he worked at the Center for the Study of Complex Systems at the University of Michigan in Ann Arbor. In August 2006, he became an assistant professor in the Department of Statistics at Carnegie Mellon University in Pittsburgh.[1]

Shalizi is co-author of the CSSR algorithm, which exploits entropy properties to efficiently extract Markov models from time-series data without assuming a parametric form for the model.[2]

Shalizi was interviewed at the Institute for New Economic Thinking in November 2011 on "Why Economics Needs Data Mining." He "urge[d] economists to stop doing what they are doing: Fitting large complex models to a small set of highly correlated time series data. Once you add enough variables, parameters, bells and whistles, your model can fit past data very well, and yet fail miserably in the future. Shalizi tells us how to separate the wheat from the chaff, how to compensate for overfitting and prevent models from memorizing noise. He introduces techniques from data mining and machine learning to economics — this is new economic thinking."[3]

Shalizi gave an invited "Distinguished Lecture" at the University of California at Santa Barbara Data Science Initiative in May 2019.[4] There he presented analysis of the statistical weaknesses of utilizing observational data to infer neighborhood effects in social networks. Id.

Shalizi's scholarly work has been cited more than 17,000 times, according to Google Scholar.[5]

Shalizi writes a popular science blog "Three-Toed Sloth".[6]

References

External links