期刊文献+

NPIPVis:A visualization system involving NBA visual analysis and integrated learning model prediction

下载PDF
导出
摘要 Background Data-driven event analysis has gradually become the backbone of modern competitive sports analysis. Competitive sports data analysis tasks increasingly use computer vision and machine-learning models for intelligent data analysis. Existing sports visualization systems focus on the player–team data visualization, which is not intuitive enough for team season win–loss data and game time-series data visualization and neglects the prediction of all-star players. Methods This study used an interactive visualization system designed with parallel aggregated ordered hypergraph dynamic hypergraphs, Calliope visualization data story technology,and i Storyline narrative visualization technology to visualize the regular statistics and game time data of players and teams. NPIPVis includes dynamic hypergraphs of a team’s wins and losses and game plot narrative visualization components. In addition, an integrated learning-based all-star player prediction model, SRR-voting, which starts from the existing minority and majority samples, was proposed using the synthetic minority oversampling technique and Random Under Sampler methods to generate and eliminate samples of a certain size to balance the number of allstar and average players in the datasets. Next, a random forest algorithm was introduced to extract and construct the features of players and combined with the voting integrated model to predict the all-star players, using GridSearch CV, to optimize the hyperparameters of each model in integrated learning and then combined with five-fold cross-validation to improve the generalization ability of the model. Finally, the SHapley Additive ex Planations(SHAP) model was introduced to enhance the interpretability of the model. Results The experimental results of comparing the SRR-voting model with six common models show that the accuracy, F1-score, and recall metrics are significantly improved, which verifies the effectiveness and practicality of the SRR-voting model. Conclusions This study combines data visualization and machine learning to design a National Basketball Association data visualization system to help the general audience visualize game data and predict all-star players;this can also be extended to other sports events or related fields.
出处 《Virtual Reality & Intelligent Hardware》 2022年第5期444-458,共15页 虚拟现实与智能硬件(中英文)
基金 Supported by the National Natural Science Foundation of China(61862018) the Subject of the Training Plan for Thousands of Young and Middle-aged Backbone Teachers in Guangxi Colleges and Universities(2020QGRW017)。
  • 相关文献

参考文献2

二级参考文献18

  • 1Goldsberry K. Courtvision: new visual and spatial analytics forthe NBA[OL]. [2015-05-15]. http://www.sloansportsconference.com/wp-content/uploads/2012/02/Goldsberry_Sloan_Submission.pdf.
  • 2Legg P A, Chung D H S, Parry M L, et al. MatchPad: interactiveGlyph based visualization for real time sports performanceanalysis[J]. Computer Graphics Forum, 2012, 31(3/4): 1255-1264.
  • 3Franks A, Miller A, Bornn L, et al. Counterpoints: advanced defensivemetrics for NBA basketball[OL]. [2015-05-15].http://www.Sloansportsconference.com/wp-content/uploads/2015/02/SSAC15-RP- Finalist-Counterpoints2.pdf.
  • 4Rusu A, Stoica D, Burns E. Analyzing soccer goalkeeper performanceusing a metaphor-based visualization[C] //Proceedingsof 15th International Conference on Information Visualization.Los Alamitos: IEEE Computer Society Press, 2011: 194-199.
  • 5Rusu A, Stoica D, Burns E, et al. Dynamic visualizations forsoccer statistical analysis[C] //Proceedings of 14th InternationalConference on Information Visualization. Los Alamitos: IEEEComputer Society Press, 2010: 207-212.
  • 6Maheswaran R, Chang Y H, Henehan A, et al. Deconstructingthe rebound with optical tracking data[OL]. [2015-05-15]. http://www.Sloansportsconference.com/wp-content/uploads/2012/02/108-sloan-sports-2012-maheswaran-chang_updated.pdf.
  • 7Lucey P, Bialkowski A, Monfort M, et al. “Quality vs Quantity”:improved shot prediction in soccer using strategic features fromspatiotemporal data[OL]. [2015-05-15]. http://www.sloansportsconference.com/wp-content/uploads/2015/02/SSAC15-RP-Finalist-Quality-vs-Quantity.pdf.
  • 8Pileggi H, Stolper C D, Boyle J M, et al. Snapshot: visualization topropel ice hockey analytics[J]. IEEE Transactions on Visualizationand Computer Graphics, 2012, 18(12): 2819-2828.
  • 9Polk T, Yang J, Hu Y Q, et al. TenniVis: visualization for tennismatch analysis[J]. IEEE Transactions on Visualization andComputer Graphics, 2014, 20(12): 2339-2348.
  • 10Parry M L, Legg P A, Chung D H S, et al. Hierarchical event selectionfor video storyboards with a case study on snooker videovisualization[J]. IEEE Transactions on Visualization and ComputerGraphics, 2011, 17(12): 1747-1756.

共引文献17

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部