<--- Back to Details
First PageDocument Content
Computing / Economy / Business / Business intelligence / Formal sciences / Analytics / Big data / Mathematical finance / Prescriptive analytics / Cloudera / MIT Sloan Sports Analytics Conference / Randy Bean
Date: 2016-06-14 05:25:30
Computing
Economy
Business
Business intelligence
Formal sciences
Analytics
Big data
Mathematical finance
Prescriptive analytics
Cloudera
MIT Sloan Sports Analytics Conference
Randy Bean

Intermediate Advanced All

Add to Reading List

Source URL: www.bigdata-toronto.com

Download Document from Source Website

File Size: 851,14 KB

Share Document on Facebook

Similar Documents

Computing / Economy / Business / Business intelligence / Formal sciences / Analytics / Big data / Mathematical finance / Prescriptive analytics / Cloudera / MIT Sloan Sports Analytics Conference / Randy Bean

Intermediate Advanced All

DocID: 1rtaR - View Document

Baseball pitching / Linear classifier / Pitch / Starting pitcher / Fastball / Count / Changeup / Sinker / Slider / Baseball / Sports / Baseball pitches

MIT Sloan Sports Analytics Conference 2012 March 2-3, 2012, Boston, MA, USA Predicting the Next Pitch Gartheeban Ganeshapillai, John Guttag Massachusetts Institute of Technology,

DocID: 12f8P - View Document

Economic efficiency / Rules of basketball / Welfare economics / Mathematical optimization / Statistical theory / Shot clock / Game 6 of the 1998 NBA Finals / Secretary problem / Allocative efficiency / Sports / Basketball / Statistics

MIT Sloan Sports Analytics Conference 2011 March 4-5, 2011, Boston, MA, USA Allocative and Dynamic Efficiency in NBA Decision Making Matt Goldman

DocID: RlnJ - View Document

Rebound / Steal / Key / Forward pass / MIT Sloan Sports Analytics Conference / Dirk Nowitzki / Turnover / Efficiency / Sports / Basketball / Basketball statistics

POINTWISE: Predicting Points and Valuing Decisions in Real Time with NBA Optical Tracking Data Dan Cervone†, Alexander D’Amour†, Luke Bornn†, and Kirk Goldsberry‡ Department of Statistics† and Institute for Q

DocID: KbeG - View Document

Analytics / Basketball statistics / Business intelligence / MIT Sloan Sports Analytics Conference / Sports business / Sports science / Data analysis / Topological data analysis / Basketball / Sports / Statistics / Science

Using Topological Data Analysis for Sports Analytics In a special topic seminar put together by our data scientist Alexis Johnson and Muthu Alagappan, we show how we use the shape in basketball statistics to compare play

DocID: nuk1 - View Document