scholarly journals Information, prices and efficiency in an online betting market

2020 ◽  
Vol 35 ◽  
pp. 101291 ◽  
Author(s):  
Guy Elaad ◽  
J. James Reade ◽  
Carl Singleton
Author(s):  
Ramon P. DeGennaro ◽  
Ann B. Gillette

Gambling has become increasingly relied on and intertwined to provide financial support for the industry and beleaguered state governments. Technology has changed the way racetrack patrons bet, with the vast and increasing majority of total bets being made away from live racing. The menu of wagering options continues to grow, with a wide variety of exotic bets, futures wagering markets, program betting, and online betting venues becoming more prevalent. This chapter reviews the available research on the components of wagering demand, the effect of government subsidies on wagering volume, and the efficiency of the betting market. It also describes several new issues that continue to affect the racing landscape.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Alexandros Kalaitzakis ◽  
Petros Lois ◽  
Spyros Repousis

PurposeThe purpose of this study is to empirically examine the efficiency of Greek fixed-odds (offline) betting market as offered by OPAP for the period 2016–2019.Design/methodology/approachUsing a four-year data sample of OPAP's opening and closing odds for football matches from all over the world and applying linear probability and probit models, the market efficiency is examined and the existence of possible anomalies is investigated.FindingsThe main findings of research suggest that although the odds are dominated primarily by favorite-longshot bias and secondarily by draw bias, this mispricing cannot prove profitable. However, the opening odds, the margin levels and the market structure provide information that is not fully captured by the closing odds, giving bettors profit opportunities. Thus, findings show that the semi-strong market efficiency is questionable. Finally, competition reduces commissions leading to more efficient odds.Practical implicationsThe conclusions of this study are useful for football betting market and, particularly, for government authorities, bookmakers and bettors. Findings can be extended in future research to prediction tasks.Originality/valueTo the best of the authors’ knowledge, this is the first study about the Greek football betting market. The contribution to the literature lies on the one hand in the examination of a monopolistic land-based betting market, which is being squeezed and threatened by the more competitive online betting market, and on the other hand in the simultaneous examination of the opening and closing odds.


2021 ◽  
Vol 11 (14) ◽  
pp. 6594
Author(s):  
Yu-Chia Hsu

The interdisciplinary nature of sports and the presence of various systemic and non-systemic factors introduce challenges in predicting sports match outcomes using a single disciplinary approach. In contrast to previous studies that use sports performance metrics and statistical models, this study is the first to apply a deep learning approach in financial time series modeling to predict sports match outcomes. The proposed approach has two main components: a convolutional neural network (CNN) classifier for implicit pattern recognition and a logistic regression model for match outcome judgment. First, the raw data used in the prediction are derived from the betting market odds and actual scores of each game, which are transformed into sports candlesticks. Second, CNN is used to classify the candlesticks time series on a graphical basis. To this end, the original 1D time series are encoded into 2D matrix images using Gramian angular field and are then fed into the CNN classifier. In this way, the winning probability of each matchup team can be derived based on historically implied behavioral patterns. Third, to further consider the differences between strong and weak teams, the CNN classifier adjusts the probability of winning the match by using the logistic regression model and then makes a final judgment regarding the match outcome. We empirically test this approach using 18,944 National Football League game data spanning 32 years and find that using the individual historical data of each team in the CNN classifier for pattern recognition is better than using the data of all teams. The CNN in conjunction with the logistic regression judgment model outperforms the CNN in conjunction with SVM, Naïve Bayes, Adaboost, J48, and random forest, and its accuracy surpasses that of betting market prediction.


2021 ◽  
Vol 15 (3) ◽  
Author(s):  
Alistair Bruce ◽  
Anastasios Oikonomidis ◽  
Ming-Chien Sung ◽  
Johnnie E. V. Johnson

2013 ◽  
Vol 2 (3) ◽  
pp. 85-100
Author(s):  
Les Coleman

This paper quantifies the extent and changes in insider trading in the Melbourne racetrack betting market using a unique, long term dataset. Wagering markets share many of the characteristics of other financial markets, and are simple, with good data and a designated endpoint. Thus they are an excellent natural laboratory to study what is probably happening in qualitatively similar conventional markets. Results of this paper provide statistically significant support for hypotheses supporting the existence and increase in level of insider trading, and suggest that around two percent of betting is by insiders.Research for this paper was supported by a grant from the Economics and Commerce faculty at the University of Melbourne, and was conducted very efficiently by Andrew Saunderson. Dr Ian O’Connor provided excellent assistance with analysis of data. I am grateful for valuable comments from the Journal’s editor and an anonymous reviewer, and from delegates to the 2004 Australasian Finance and Banking Conference where an early version of this paper was presented. All remaining errors and omissions are mine.


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