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Locality: Berkeley, California

Phone: +1 510-642-2781



Address: 367 Evans Hall, MC#3860 94720-3860 Berkeley, CA, US

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University of California, Berkeley Statistics Major 16.11.2020

Statistics Undergraduate Student Association Info Session #1 Tonight!

University of California, Berkeley Statistics Major 03.11.2020

The University Medal is one of the most competitive and prestigious awards given to a graduating senior at UC Berkeley. To qualify students must embody the miss...ion and message of the university, have made a meaningful impact on their community, overcome significant personal obstacles, and maintained a 3.96 GPA or better. We are so excited to share that Will Sandholtz, a statistics and economics major, was chosen as 1 of the 4 runners up. You can read more about him and the other University Medal runner-ups here, http://news.berkeley.edu//meet-the-2018-university-medal-r....

University of California, Berkeley Statistics Major 26.10.2020

One of our department's founding faculty...

University of California, Berkeley Statistics Major 05.10.2020

Tomorrow! Check it out!

University of California, Berkeley Statistics Major 21.09.2020

Statistics advisors will be in attendance!

University of California, Berkeley Statistics Major 06.09.2020

Today we feature a guest post by #NASmember Bin Yu of UC Berkeley for #WorldStatisticsDay: Over the last few centuries, statistics has evolved from gathering de...mographic information about people to an awesome field of helping data-driven decisions in industry and data-driven knowledge generation in sciences and social sciences. For example, clinical trials are conducted by medical doctors and biostatisticians to provide evidence for the U.S. Food and Drug Administration to decide on a new drug release to save lives; supervised learning in machine learning (a frontier field of both statistics and computer science) is playing an important role from cancer diagnosis to self-driving car design. The burgeoning field of data science is a re-merging of computational and statistical/inferential thinking. It heavily relies on statistics as well as computer science, mathematics, and domain knowledge to solve data problems. In 1890, the volume of US census data drove statistician Herman Hollerith to invent the Hollerith Tabulating Machine. His company with other three companies later formed IBM. It is timely to see an integration of ideas and concepts of statistics and computer science in two new undergraduate data science courses at Berkeley (http://data8.org/, http://www.ds100.org/). The stability principle has emerged as a central principle of data science that builds on stability of knowledge on one hand, and on the other, connects to statistical inference or uncertainty assessment (Yu, Stability, Bernoulli, 2013). It is a minimum requirement for reproducibility and interpretability. In a nutshell, it makes it self-evident that data-driven decisions and knowledge should be stable relative to appropriate perturbations in data, models, methods algorithms, and ad-hoc human decisions in the data analysis cycle. It helps prevent p-hacking, model-hacking*, and false discoveries. It can be employed as early as the phase of exploratory data analysis and data visualization. Meaningful data patterns (e.g. a linear trend) should persist by using 80% of the data deemed as an appropriate perturbation. An appropriate data perturbation means a sample similar to the original data set, with similarity decided using information from domain knowledge and data collection process. If not, further investigations are warranted before the discovery of a linear trend is claimed to be a data result or discovery. This principle is conceptually simple to use and easily understood by data scientists and consumers of data results alike. Give it a try! *Footnote: model-hacking is defined by the author as the phenomenon that one tries a large number of models (or algorithms) to find a desirable data result. It is a form of taking noise as results. #DataDriven #DecisionMaker #algorithms Learn more about Dr. Yu’s work at: https://projecteuclid.org/do/pdfview_1/euclid.bj/1377612862 http://www.nasonline.org/member-direc/members/20022958.html

University of California, Berkeley Statistics Major 23.08.2020

Reminder to those interested in learning more about the Statistics major--we have an Info Session today (9/15/17) at 3pm in 330 Evans Hall.

University of California, Berkeley Statistics Major 04.08.2020

Hey Warriors Fans, check out the new article co-authored by faculty member Lisa Goldberg about the Myth of the Hot Hand focusing on Splash brothers Steph Curry and Klay Thompson. http://statistics.berkeley.edu//new-research-myth-hot-hand