Making reliable preseason batter projections for baseball players is an issue of utmost importance to both teams and fans who seek to infer a player's underlying talent or predict future performance. However, this has proven to be a difficult task due to the high-variance nature of baseball and the lack of abundant, clean data. For this reason, current leading models rely mostly upon expert knowledge. We propose DeepBall, which combines a recurrent neural network with novel regularization and ensemble aggregation. We compare this to Marcel, the industry-standard open-source baseline, and other traditional machine learning techniques, and DeepBall outperforms all. DeepBall is also easily extended to predict multiple years in the future. In a...
The stateful nature of baseball has made it a prime candidate for exploring the topics of planning a...
Data science, where technical expertise meets do-main knowledge, is collaborative by nature. Comple...
Machine Learning via Artificial Neural Networks (ANNs) is often introduced in a one-semester course ...
Making reliable preseason batter projections for baseball players is an issue of utmost importance t...
Baseball has quickly become one of the most analyzed sports with significant growth in the last 20 y...
Sports prediction has always been an interesting problem in the entertainment industry. Many data sc...
I was inspired to work on this project by the book “Moneyball” by Michael Lewis. The book discusses ...
Abstract: Baseball is a sport of statistics. The industry has accumulated detailed offensive and def...
In this paper, we will discuss a method of building a predictive model for Major League Baseball Gam...
Computer modeling and projections are becoming a part of every industry, and it is no different in p...
(1) Background and Objective: Major League Baseball (MLB) is one of the most popular international s...
Alceo, P., & Henriques, R. (2019). Sports Analytics: maximizing precision in predicting MLB base hit...
In 2017 alone Major League Baseball organizations spent a combined 492 million dollars on acquiring ...
Sensor systems that acquire large sets of data have been deployed to document sporting events at unp...
The 162 game long Major League Baseball season provides ample time for a player’s performance to var...
The stateful nature of baseball has made it a prime candidate for exploring the topics of planning a...
Data science, where technical expertise meets do-main knowledge, is collaborative by nature. Comple...
Machine Learning via Artificial Neural Networks (ANNs) is often introduced in a one-semester course ...
Making reliable preseason batter projections for baseball players is an issue of utmost importance t...
Baseball has quickly become one of the most analyzed sports with significant growth in the last 20 y...
Sports prediction has always been an interesting problem in the entertainment industry. Many data sc...
I was inspired to work on this project by the book “Moneyball” by Michael Lewis. The book discusses ...
Abstract: Baseball is a sport of statistics. The industry has accumulated detailed offensive and def...
In this paper, we will discuss a method of building a predictive model for Major League Baseball Gam...
Computer modeling and projections are becoming a part of every industry, and it is no different in p...
(1) Background and Objective: Major League Baseball (MLB) is one of the most popular international s...
Alceo, P., & Henriques, R. (2019). Sports Analytics: maximizing precision in predicting MLB base hit...
In 2017 alone Major League Baseball organizations spent a combined 492 million dollars on acquiring ...
Sensor systems that acquire large sets of data have been deployed to document sporting events at unp...
The 162 game long Major League Baseball season provides ample time for a player’s performance to var...
The stateful nature of baseball has made it a prime candidate for exploring the topics of planning a...
Data science, where technical expertise meets do-main knowledge, is collaborative by nature. Comple...
Machine Learning via Artificial Neural Networks (ANNs) is often introduced in a one-semester course ...