winger
Run for president? Start a podcast? Tackle AI? Kamala Harris' options are wide open
Former Vice President Kamala Harris closed a big door when she announced Wednesday that she would not run for California governor. But she left open a heap of others. Departing presidents, vice presidents, first ladies and failed presidential candidates have pursued a wide variety of paths in the past. Empowered with name recognition and influence but with no official role to fill, they possess the freedom to choose their next adventure. Al Gore took up a cause in global warming, while George W. Bush took up painting.
- North America > United States > California (0.63)
- North America > United States > District of Columbia > Washington (0.05)
- Information Technology > Communications > Mobile (0.42)
- Information Technology > Artificial Intelligence (0.30)
A Graph Neural Network deep-dive into successful counterattacks
Bekkers, Joris, Sahasrabudhe, Amod
A counterattack in soccer is a high speed, high intensity direct attack that can occur when a team transitions from a defensive state to an attacking state after regaining possession of the ball. The aim is to create a goal-scoring opportunity by convering a lot of ground with minimal passes before the opposing team can recover their defensive shape. The purpose of this research is to build gender-specific Graph Neural Networks to model the likelihood of a counterattack being successful and uncover what factors make them successful in professional soccer. These models are trained on a total of 20863 frames of synchronized on-ball event and spatiotemporal (broadcast) tracking data. This dataset is derived from 632 games of MLS (2022), NWSL (2022) and international soccer (2020-2022). With this data we demonstrate that gender-specific Graph Neural Networks outperform architecturally identical gender-ambiguous models in predicting the successful outcome of counterattacks. We show, using Permutation Feature Importance, that byline to byline speed, angle to the goal, angle to the ball and sideline to sideline speed are the node features with the highest impact on model performance. Additionally, we offer some illustrative examples on how to navigate the infinite solution search space to aid in identifying improvements for player decision making. This research is accompanied by an open-source repository containing all data and code, and it is also accompanied by an open-source Python package which simplifies converting spatiotemporal data into graphs. This package also facilitates testing, validation, training and prediction with this data. This should allow the reader to replicate and improve upon our research more easily.
- Africa > Nigeria (0.04)
- North America > United States > District of Columbia > Washington (0.04)
- Europe > Netherlands (0.04)
- Europe > Belgium > Flanders > East Flanders > Ghent (0.04)
Identification of pattern mining algorithm for rugby league players positional groups separation based on movement patterns
Adeyemo, Victor Elijah, Palczewska, Anna, Jones, Ben, Weaving, Dan
The application of pattern mining algorithms to extract movement patterns from sports big data can improve training specificity by facilitating a more granular evaluation of movement. As there are various pattern mining algorithms, this study aimed to validate which algorithm discovers the best set of movement patterns for player movement profiling in professional rugby league and the similarity in extracted movement patterns between the algorithms. Three pattern mining algorithms (l-length Closed Contiguous [LCCspm], Longest Common Subsequence [LCS] and AprioriClose) were used to profile elite rugby football league hookers (n = 22 players) and wingers (n = 28 players) match-games movements across 319 matches. Machine learning classification algorithms were used to identify which algorithm gives the best set of movement patterns to separate playing positions with Jaccard similarity score identifying the extent of similarity between algorithms' movement patterns. LCCspm and LCS movement patterns shared a 0.19 Jaccard similarity score. AprioriClose movement patterns shared no significant similarity with LCCspm and LCS patterns. The closed contiguous movement patterns profiled by LCCspm best-separated players into playing positions. Multi-layered Perceptron algorithm achieved the highest accuracy of 91.02% and precision, recall and F1 scores of 0.91 respectively. Therefore, we recommend the extraction of closed contiguous (consecutive) over non-consecutive movement patterns for separating groups of players.
- Europe > United Kingdom > England > West Yorkshire > Leeds (0.05)
- Africa > South Africa > Western Cape > Cape Town (0.04)
- Oceania > Australia > Victoria > Melbourne (0.04)
- North America > United States > New York > New York County > New York City (0.04)
- Information Technology > Data Science > Data Mining (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Pattern Recognition (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Regression (0.69)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Perceptrons (0.68)
Is it worth the effort? Understanding and contextualizing physical metrics in soccer
Llana, Sergio, Burriel, Borja, Madrero, Pau, Fernández, Javier
Despite the vast number of publications, most research has focused on assessing player performance based on isolated metrics such as distance covered, accelerations, or high-intensity runs (HI) (Bradley et al. 2013; Altmann et al. 2021; Ingebrigtsen et al. 2015). In addition, the tactical context tends to be widely simplified and often ignored. For sports scientists and soccer practitioners, the idea that the integration of tactical and qualitative information can be very beneficial to develop a much more in-depth analysis of physical demands does not go unnoticed. However, the lack of spatiotemporal data that allows analyzing individual effort within the collective context has been an enormous barrier for developing this integration between the physical and the tactical. Far on the horizon remains the old question: is it about running more or running better?
Transfer Portal: Accurately Forecasting the Impact of a Player Transfer in Soccer
Dinsdale, Daniel, Gallagher, Joe
One of the most important and challenging problems in football is predicting future player performance when transferred to another club within and between different leagues. In addition to being the most valuable prediction a team makes, it is also the most complex analytics task to perform as it needs to take into consideration: a) differences in playing style between the player's current team and target team, b) differences in style and ability of other players on each team, c) differences in league quality and style, and d) the role the player is desired to play. In this paper, we present a method which addresses these issues and enables us to make accurate predictions of future performance. Our Transfer Portal model utilizes a personalized neural network accounting for both stylistic and ability level input representations for players, teams, and leagues to simulate future player performance at any chosen club. Furthermore, we use a Bayesian updating framework to dynamically modify player and team representations over time which enables us to generate predictions for rising stars with small amounts of data.
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.04)
- Europe > Spain > Galicia > Madrid (0.04)
- Europe > Netherlands > North Brabant > Eindhoven (0.04)
- (6 more...)
- Leisure & Entertainment > Sports > Soccer (1.00)
- Leisure & Entertainment > Games (1.00)