We consider the problem of learning predictive models for in-game sports play prediction. Focusing on basketball, we develop models for anticipating near-future events given the current game state. We employ a latent factor modeling approach, which leads to a compact data representation that enables efficient prediction given raw spatiotemporal tracking data. We validate our approach using tracking data from the 2012-2013 NBA season, and show that our model can make accurate in-game predictions. We provide a detailed inspection of our learned factors, and show that our model is interpretable and corresponds to known intuitions of basketball game play
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
Recently, strategies of National Basketball Association (NBA) teams have evolved with the skillsets ...
There have been a number of studies that try to predict sporting event outcomes. Most previous resea...
We consider the problem of learning predictive models for in-game sports play prediction. Focusing o...
We consider the problem of learning predictive models for in-game sports play prediction. Focusing o...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
abstract: Machine learning is one of the fastest growing fields and it has applications in almost an...
This article proposes a novel approach, called data snapshots, to generate real-time probabilities o...
. With the development of information technology and an ever-expanding statistical base, the possibi...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Abstract Basketball games evolve continuously in space and time as players con-stantly interact with...
In recent years, machine learning, particularly deep learning has become in- creasingly studied, an...
Basketball has changed greatly over recent years, thanks to the data-driven revolution in the way th...
In this paper, we summarize our recent work in analyz- ing and predicting behaviors in sports using ...
This research represents pioneering work to exploit new and rich data from tracking system to model ...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
Recently, strategies of National Basketball Association (NBA) teams have evolved with the skillsets ...
There have been a number of studies that try to predict sporting event outcomes. Most previous resea...
We consider the problem of learning predictive models for in-game sports play prediction. Focusing o...
We consider the problem of learning predictive models for in-game sports play prediction. Focusing o...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
abstract: Machine learning is one of the fastest growing fields and it has applications in almost an...
This article proposes a novel approach, called data snapshots, to generate real-time probabilities o...
. With the development of information technology and an ever-expanding statistical base, the possibi...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Abstract Basketball games evolve continuously in space and time as players con-stantly interact with...
In recent years, machine learning, particularly deep learning has become in- creasingly studied, an...
Basketball has changed greatly over recent years, thanks to the data-driven revolution in the way th...
In this paper, we summarize our recent work in analyz- ing and predicting behaviors in sports using ...
This research represents pioneering work to exploit new and rich data from tracking system to model ...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
Recently, strategies of National Basketball Association (NBA) teams have evolved with the skillsets ...
There have been a number of studies that try to predict sporting event outcomes. Most previous resea...