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Year 2019, Issue: 27, 63 - 73, 01.03.2019

Abstract

References

  • [1] S. Baysal, E. Yıldıztepe, Futbol Takımlarının Sezon Sonu Puanlarının Tahmini için Pisagor Beklentisine Dayalı bir Çalışma, Akademik Bilişim 2019, Ordu, 2019.
  • [2] J. Cochran, R. Blackstock, Pythagoras and the National Hockey League, Journal of Quantitative Analysis in Sports 5 (2009) 1-13.
  • [3] J. Croucher, Player ratings in one-day cricket, Proceedings of the Fifth Australian Conference on Mathematics and Computers in Sport, Sydney, 2000.
  • [4] C. Davenport, K. Woolner, Revisiting the Pythagorean Theorem: Putting Bill James’ Pythagorean Theorem to the test', https://www.baseballprospectus.com/news/article/342/revisiting-the-pythagorean-theorem-putting-bill-james-pythagorean-theorem-to-the-test/ (January, 2019).
  • [5] M. Eastwood, Applying the Pythagorean Expectation to Football: Part Two, http://pena.lt/y/2012/12/03/applying-the-pythagorean-expectation-to-football-part-two/ (December, 2018).
  • [6] H. H. Hamilton, An extension of the pythagorean expectation for association football, Journal of Quantitative Analysis in Sports 7 (2011).
  • [7] B. James, The Bill James Baseball Abstract, 1980.
  • [8] B. James, The Bill James Historical Baseball Abstract, Villard, New York, 1985.
  • [9] J. Lee, Measuring the accuracy of the Pythagorean theorem in Korean pro-baseball, Journal of the Korean Data and Information Science Society 26 (2015) 653-659.
  • [10] C. K. Leung, K. W. Joseph, Sports data mining: predicting results for the college football games, Procedia Computer Science 35 (2014) 710-719.
  • [11] Mackolik, Puan durumu, http://arsiv.mackolik.com/Puan-Durumu (December, 2018).
  • [12] S. J. Miller, A Derivation of the Pythagorean Won-Loss Formula in Baseball, Chance 20 (2007) 40-48.
  • [13] D. Oliver, Basketball on paper : rules and tools for performance analysis, Potomac, Washington D.C, 2004.
  • [14] A. Schatz, Pythagoras on the Gridiron, https://www.footballoutsiders.com/stat-analysis/2003/pythagoras-gridiron (January, 2019).
  • [15] R. P. Schumaker, O. K. Solieman, H. Chen, Sports Data Mining, Springer, Boston, 2010.
  • [16] D. D. Tung, Confidence Intervals for the Pythagorean Formula in Baseball, http://www.rxiv.org/pdf/1005.0020v1.pdf (November, 2018).
  • [17] S. C. Valero, Predicting Win-Loss outcomes in MLB regular, International Journal of Computer Science in Sport 15 (2016) 91-112.
  • [18] A. J. Vine, Using Pythagorean Expectation to Determine Luck in the KFC Big Bash League, Economic Papers 35 (2016).
  • [19] D. Zminda, J. Dewan, STATS Inc. Staff, STATS Basketball Scoreboard, 1993-94, Harpercollins Publishers, Skokie, 1993.

Prediction of Season-End Point for Football using Pythagorean Expectation

Year 2019, Issue: 27, 63 - 73, 01.03.2019

Abstract

The use of data collected
on players, teams, and games for performance evaluation, player selection, score-outcome
estimation, and strategy development using data mining tools and techniques are
defined as sports data mining.
Performance measures,
unlike the common statistical methods, developed for each sport branch have an
important role in sports data mining processes. Performance measures calculated
for team sports can be used to predict the expectation of winning. The
Pythagorean expectation developed for this objective was originally used in
baseball games. The Pythagorean Expectation has also been adapted for other
team sports with two results, such as basketball. However, the studies using
Pythagorean Expectation for sports which have three possible outcomes are very
limited. In this study, a suggestion for the calculation of Pythagorean Expectation
for football is presented. In the application section, end-season rankings and
points for the 2017/2018 season of  the
selected fifteen European football leagues are predicted by using the suggested
method. The data of the past five seasons of the selected European football
leagues is used as the training dataset. All calculations are performed in R.

References

  • [1] S. Baysal, E. Yıldıztepe, Futbol Takımlarının Sezon Sonu Puanlarının Tahmini için Pisagor Beklentisine Dayalı bir Çalışma, Akademik Bilişim 2019, Ordu, 2019.
  • [2] J. Cochran, R. Blackstock, Pythagoras and the National Hockey League, Journal of Quantitative Analysis in Sports 5 (2009) 1-13.
  • [3] J. Croucher, Player ratings in one-day cricket, Proceedings of the Fifth Australian Conference on Mathematics and Computers in Sport, Sydney, 2000.
  • [4] C. Davenport, K. Woolner, Revisiting the Pythagorean Theorem: Putting Bill James’ Pythagorean Theorem to the test', https://www.baseballprospectus.com/news/article/342/revisiting-the-pythagorean-theorem-putting-bill-james-pythagorean-theorem-to-the-test/ (January, 2019).
  • [5] M. Eastwood, Applying the Pythagorean Expectation to Football: Part Two, http://pena.lt/y/2012/12/03/applying-the-pythagorean-expectation-to-football-part-two/ (December, 2018).
  • [6] H. H. Hamilton, An extension of the pythagorean expectation for association football, Journal of Quantitative Analysis in Sports 7 (2011).
  • [7] B. James, The Bill James Baseball Abstract, 1980.
  • [8] B. James, The Bill James Historical Baseball Abstract, Villard, New York, 1985.
  • [9] J. Lee, Measuring the accuracy of the Pythagorean theorem in Korean pro-baseball, Journal of the Korean Data and Information Science Society 26 (2015) 653-659.
  • [10] C. K. Leung, K. W. Joseph, Sports data mining: predicting results for the college football games, Procedia Computer Science 35 (2014) 710-719.
  • [11] Mackolik, Puan durumu, http://arsiv.mackolik.com/Puan-Durumu (December, 2018).
  • [12] S. J. Miller, A Derivation of the Pythagorean Won-Loss Formula in Baseball, Chance 20 (2007) 40-48.
  • [13] D. Oliver, Basketball on paper : rules and tools for performance analysis, Potomac, Washington D.C, 2004.
  • [14] A. Schatz, Pythagoras on the Gridiron, https://www.footballoutsiders.com/stat-analysis/2003/pythagoras-gridiron (January, 2019).
  • [15] R. P. Schumaker, O. K. Solieman, H. Chen, Sports Data Mining, Springer, Boston, 2010.
  • [16] D. D. Tung, Confidence Intervals for the Pythagorean Formula in Baseball, http://www.rxiv.org/pdf/1005.0020v1.pdf (November, 2018).
  • [17] S. C. Valero, Predicting Win-Loss outcomes in MLB regular, International Journal of Computer Science in Sport 15 (2016) 91-112.
  • [18] A. J. Vine, Using Pythagorean Expectation to Determine Luck in the KFC Big Bash League, Economic Papers 35 (2016).
  • [19] D. Zminda, J. Dewan, STATS Inc. Staff, STATS Basketball Scoreboard, 1993-94, Harpercollins Publishers, Skokie, 1993.
There are 19 citations in total.

Details

Primary Language English
Subjects Applied Mathematics
Journal Section Research Article
Authors

Sezer Baysal This is me

Engin Yıldıztepe

Publication Date March 1, 2019
Submission Date February 20, 2019
Published in Issue Year 2019 Issue: 27

Cite

APA Baysal, S., & Yıldıztepe, E. (2019). Prediction of Season-End Point for Football using Pythagorean Expectation. Journal of New Theory(27), 63-73.
AMA Baysal S, Yıldıztepe E. Prediction of Season-End Point for Football using Pythagorean Expectation. JNT. March 2019;(27):63-73.
Chicago Baysal, Sezer, and Engin Yıldıztepe. “Prediction of Season-End Point for Football Using Pythagorean Expectation”. Journal of New Theory, no. 27 (March 2019): 63-73.
EndNote Baysal S, Yıldıztepe E (March 1, 2019) Prediction of Season-End Point for Football using Pythagorean Expectation. Journal of New Theory 27 63–73.
IEEE S. Baysal and E. Yıldıztepe, “Prediction of Season-End Point for Football using Pythagorean Expectation”, JNT, no. 27, pp. 63–73, March 2019.
ISNAD Baysal, Sezer - Yıldıztepe, Engin. “Prediction of Season-End Point for Football Using Pythagorean Expectation”. Journal of New Theory 27 (March 2019), 63-73.
JAMA Baysal S, Yıldıztepe E. Prediction of Season-End Point for Football using Pythagorean Expectation. JNT. 2019;:63–73.
MLA Baysal, Sezer and Engin Yıldıztepe. “Prediction of Season-End Point for Football Using Pythagorean Expectation”. Journal of New Theory, no. 27, 2019, pp. 63-73.
Vancouver Baysal S, Yıldıztepe E. Prediction of Season-End Point for Football using Pythagorean Expectation. JNT. 2019(27):63-7.


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