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Sports Medicine

Research Article Volume 1 Issue 4

Quantify the fielding performance in cricket via bayesian approach

Hemanta Saikia,1 Dibyojyoti Bhattacharjee,2 Hoffie H Lemmer3

1Assistant Professor of Statistics, College of Sericulture, Assam Agricultural University, India
2Professor and Head, Department of Statistics, Assam University, India
3Emeritus Professor, Department of Statistics, University of Johannesburg, South Africa

Correspondence: Hemanta Saikia, Assistant Professor of Statistics, Assam Agricultural University, India, Tel 9954154094

Received: August 29, 2017 | Published: September 22, 2017

Citation: Saikia H, Bhattacharjee D, Lemmer HH. Quantify the fielding performance in cricket via bayesian approach. MOJ Sports Med. 2017;1(4):77-83. DOI: 10.15406/mojsm.2017.01.00019

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Abstract

Saikia, Bhattacharjee & Lemmer1 proposed two fielding performance measure called Preparatory Fielding Performance Measure (PFPM) and Fairer Fielding Performance Measure (FFPM) through the ball-by-ball information of a match or series of matches. The FFPM is reasonably better measure than PFPM if the purpose is to compare the fielding performances of players irrespective of their fielding positions. Therefore, FFPM can be used to rank the fielders in cricket (like ICC player ranking) based on their on-field activities. However, collecting ball-by-ball information for the series of cricket matches is a tedious job. Moreover, in the absence of any optical observation system, the entire ball-by-ball information collections, as well as computation, have to be done manually by watching the off-line video of the match. Thus, this study proposes an extension over the FFPM using Bayesian approach. The proposed fielding measure has basically two parts in which it considers ball-by-ball information of some matches of a series and scorecard information of the remaining matches. In order to demonstrate the measure, fifteen (15) cricketers are selected from the fourth season of Indian Premier League (IPL). Accordingly, the best fielder is identified among the 15 selected cricketers by ranking them on the basis of on-field activities in the fourth season of IPL.

Keywords: Cricket; Fielding; IPL; Performance measurement; Sports

Abbreviations

cricket, fielding, ipl, performance measurement, sports

Introduction

Performance statistics are often used to indicate the level of achievement of the players in sports.2 Cricket is a team sport that prides itself on the fact that statistics is generated in each and every ball of the game in terms of players, teams, games and seasons. Cricket heavily relies on performance statistics to measure the performance of its players. For example - strike rate, batting average, the percentage of contribution to the team total, etc. for batsmen; and bowling average, economy rate, bowling strike rate, etc. for bowlers.3

Several performance measures which combines traditional performance statistics to measure the overall performance of batsmen and bowlers have already been proposed by different authors like Kimber & Hansford,4 Croucher,5 Beaudin & Swartz,6 Barr & Kantor,7 Lemmer,8,9 Lewis,10 Damodaran,11 Maini & Narayanan,12 Gerber & Sharp,13 Suleman & Saeed,14 Borooah & Mangan15 and others. Saikia Bhattacharjee & Bhattacharjee16 proposed a model that can be used to quantify the batting, bowling and wicket keeping performance of cricketers based on the data from the scorecard of a match. A performance measure for wicket keepers in cricket, that combined the dismissal rate (number of catches taken and stumpings done per match) and batting performance has been developed by Lemmer.17

However, the game of cricket is yet to have a proper measure for quantifying fielding performance. The fielding performances that are perceivable from the scorecard of a match are number of catches and run-outs. But a fielder does more than that in the field which is not expressed in the scorecard unlike the other prime skills of the game like batting and bowling. International Cricket Council (ICC) releases the ranking of teams as well as batsmen, bowlers and all-rounders periodically on the basis of on-field performance of the cricketers. But there is no ICC ranking for fielders in the game of cricket.

Fielding in cricket is the on-field action of a fielder. A fielder in a cricket match always tries to prevent the scoring of runs that the batsman desires to get by quickly returning the ball to the stumps. He also tries to get the batsman out by catching the ball or by executing a run out. In cricket, great feats of batting and bowling usually hit the headlines but it is often ignored that good fielding too can make a crucial contribution to a team’s success.18 With the advent of ODI and the recent format of Twenty20 cricket, fielding has become more athletic and is developing as a discipline to rival batting and bowling in the interest of spectators.19 Players too are becoming more and more concern about their fielding performance nowadays. They have started believing the fact that effective and tight fielding can help their team to win the match.

Traditionally, only two factors have been considered as the performance indicator of fielders in cricket - number of catches taken and run outs accomplished due to the availability of only these two factors in the scorecard of a match. However, it can be easily observed that there are several other factors involved in fielding. Even in considering catches and run outs, other factors such as the difficulty level and the accuracy of such actions need to be considered. Therefore, to provide an accurate measure for fielding performance one has to take into account all the subtle nuances involved in the process of fielding. Such an approach which considers all these factors will require ball-by-ball information of a match.

Gerber & Sharp13 proposed a fielding performance index for the game of cricket. According to that measure, the fielding ability of a player is subject to the number of specialist fielders that are available in the team. Since fielding of a player mostly depends on his own skill and not on the skills of any other specialist fielder. Thus the measure has got some obvious faults and limitations. Considering the loopholes in Gerber & Sharp13 proposed measure and the need for a measure which can analyse all the critical issues as discussed above Saikia Bhattacharjee & Lemmer1 proposed two fielding performance measures called the preparatory fielding performance measure (PFPM) and a refined measure called the fairer fielding performance measure (FFPM) based on ball-by-ball information of a match or a series of matches. These two measures can be used to rank the fielders in the game of cricket.

It is obvious that a fielding measure based on ball-by-ball information shall precisely look into all details of a fielder’s activities in a match. However, to judge the actual quality of a fielder it is necessary to consider the performance details of a player from a considerable number of matches instead of just one or two. In the words of Lewis,10 “…the effects of outstanding or poor, single performances are smoothed over the larger number of games”. But to use the measures defined by Saikia, Bhattacharjee and Lemmer1 for several matches, the job of data collection becomes tedious. The ball-by-ball information necessary for using the PFPM and FFPM is to be collected by watching the off-line video. In the absence of any optical observation system, the entire exercise is to be done manually which makes the measure really time-consuming. This makes both the measures defined in Saikia, Bhattacharjee & Lemmer1 difficult to use beyond a fewer number of matches. Thus, this study proposes an extension over the fielding performance measures defined in Saikia, Bhattacharjee & Lemmer.1 To demonstrate the measure, fifteen (15) cricketers are selected from the fourth season of Indian Premier League (IPL-IV) and their fielding performances are quantified.

Fielding performance measure

A reasonable fielding measure requires ball-by-ball information from a larger number of matches, but collecting the same beyond fewer matches is hectic and time-consuming. In this study, the proposed measure is a negotiation between the two. It has two parts (A and B). Part A is an improved version of the FFPM value of a said player measured from the ball-by-ball information of few matches (generally three) of a series. It is computed using the process discussed in Saikia, Bhattacharjee & Lemmer1 and then extended with a Bayesian paradigm. Part B is computed from the scorecard information of the remaining matches of the series from which ball-by-ball information was not collected.

Thus, the proposed fielding performance measure considers ball-by-ball information of some matches of a series and scorecard information of the remaining matches. The proposed fielding performance measure can be defined as

F P j = A j + B j MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGgbGaamiuaKqba+aadaWgaaqaaKqzadWdbiaadQgaaKqb a+aabeaajugib8qacqGH9aqpcaWGbbqcfa4damaaBaaabaqcLbmape GaamOAaaqcfa4daeqaaKqzGeWdbiabgUcaRiaadkeajuaGpaWaaSba aeaajugWa8qacaWGQbaajuaGpaqabaaaaa@4785@  (1)

where Aj is the average FFPM of the jth player through the ball-by-ball information of few matches of a series and later improved using a Bayesian model and Bj is the fielding performance score of the jth player through the scorecard of the remaining matches of the series.

Fielding Performance Measure based on ball-by-ball information of the match (Aj)

In cricket, the fielding positions can basically be divided into two parts viz. close fielding which is within the 30 yards circle and distant fielding outside the 30 yards circle. Under these two fielding positions, three different aspects of fielding (i.e. catch, picking the ball and run out) can be observed as on-field performances of the cricketers. A good and active fielder always tries to catch the ball in flight or to throw it as hard and quickly as possible, irrespective of the fielding position. In addition, one good throw in a cricket match may play a vital role, as a run out can lead to the loss of a batsman of the opposing team which may even turn the outcome of the match. To consider all these aspects of fielding, ball-by-ball information of a player in a match is required. Ranges of parameters are considered and scores are assigned to these parameters based on the on-field performances of the fielders. The parameters considered for the study and their corresponding scores can be seen in Appendix-A.

Clarke2 states that a cricketer’s innings score can be modelled as

S = X 1 + X 2 +     + X N MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGtbGaeyypa0JaamiwaKqba+aadaWgaaqaaKqzadWdbiaa igdaaKqba+aabeaajugib8qacqGHRaWkcaWGybWcpaWaaSbaaKqbag aajugWa8qacaaIYaaajuaGpaqabaqcLbsapeGaey4kaSIaaeiiaiab gAci8kaabccacqGHRaWkcaWGybqcfa4damaaBaaabaqcLbmapeGaam Otaaqcfa4daeqaaaaa@4BE7@ (2)

Where Xi is the score by the cricketer on the ith ball faced and N is a random variable, representing the number of balls faced. Thus, the average batting performance of a batsman and his variation or consistency in that innings can be measured by

E ( S )   =   E ( X ) .   E ( N ) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGfbqcfa4damaabmaabaqcLbsapeGaam4uaaqcfa4daiaa wIcacaGLPaaajugib8qacaGGGcGaeyypa0JaaeiiaiaadweajuaGpa WaaeWaaeaajugib8qacaWGybaajuaGpaGaayjkaiaawMcaaKqzGeWd biaac6cacaqGGaGaamyraKqba+aadaqadaqaaKqzGeWdbiaad6eaaK qba+aacaGLOaGaayzkaaaaaa@4B06@ (3)

V a r ( S )   = E ( X ) 2 .   V a r ( N )   +   E ( N ) . V a r ( X ) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGwbGaamyyaiaadkhajuaGpaWaaeWaaeaajugib8qacaWG tbaajuaGpaGaayjkaiaawMcaaKqzGeWdbiaacckacqGH9aqpcaWGfb qcfa4damaabmaabaqcLbsapeGaamiwaaqcfa4daiaawIcacaGLPaaa daahaaqabeaajugWa8qacaaIYaaaaKqzGeGaaiOlaiaabccacaWGwb GaamyyaiaadkhajuaGpaWaaeWaaeaajugib8qacaWGobaajuaGpaGa ayjkaiaawMcaaKqzGeWdbiaabccacqGHRaWkcaqGGaGaamyraKqba+ aadaqadaqaaKqzGeWdbiaad6eaaKqba+aacaGLOaGaayzkaaqcLbsa peGaaiOlaiaadAfacaWGHbGaamOCaKqba+aadaqadaqaaKqzGeWdbi aadIfaaKqba+aacaGLOaGaayzkaaaaaa@6059@ (4)

This concept has been thoroughly used to measure the fielding performance of the cricketers through the ball-by-ball information of a match.

Let Yij’s (i = 1, 2, …, Nj) be the fielding performance score of the jth player in the ith ball that he fielded in a match or series of matches. The values of Yij’s are obtained in the same manner as the values of Xij’s were obtained in Saikia, Bhattacharjee & Lemmer.1 Then the fielding performance scores for the jth cricketer can be modelled as

A j = Y 1 j + Y 2 j + ... + Y N j   j = i = 1 N j Y i j MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaamyqaK qbaoaaBaaabaqcLbmacaWGQbaajuaGbeaajugibiabg2da9iaadMfa juaGdaWgaaqaaKqzadGaaGymaiaadQgaaKqbagqaaKqzGeGaey4kaS IaamywaKqbaoaaBaaabaqcLbmacaaIYaGaamOAaaqcfayabaqcLbsa cqGHRaWkcaGGUaGaaiOlaiaac6cacqGHRaWkcaWGzbqcfa4aaSbaae aajugWaiaad6ealmaaBaaajuaGbaqcLbmacaWGQbaajuaGbeaajugW aiaabccacaWGQbaajuaGbeaajugibiabg2da9KqbaoaaqahabaqcLb sacaWGzbqcfa4aaSbaaeaajugWaiaadMgacaWGQbaajuaGbeaaaeaa jugWaiaadMgacqGH9aqpcaaIXaaajuaGbaqcLbmacaWGobWcdaWgaa qcfayaaKqzadGaamOAaaqcfayabaaajugibiabggHiLdaaaa@6A93@ (5)

Where Nj is the random variable, being the number of balls fielded by the jth player in a given match. Hence, the average fielding performance of jth cricketer and his level of consistency in fielding can be measured by

E ( A j )   =   E ( Y i j ) . E ( N j )           MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGfbqcfa4damaabmaabaqcLbsapeGaamyqaKqba+aadaWg aaqaaKqzadWdbiaadQgaaKqba+aabeaaaiaawIcacaGLPaaajugib8 qacaGGGcGaeyypa0JaaeiiaiaadweajuaGpaWaaeWaaeaajugib8qa caWGzbqcfa4damaaBaaabaqcLbmapeGaamyAaiaadQgaaKqba+aabe aaaiaawIcacaGLPaaajugib8qacaGGUaGaamyraKqba+aadaqadaqa aKqzGeWdbiaad6eajuaGpaWaaSbaaeaajugWa8qacaWGQbaajuaGpa qabaaacaGLOaGaayzkaaqcLbsapeGaaiiOaiaacckacaGGGcGaaiiO aiaacckaaaa@5A54@ (6)

V a r ( A j )   = E ( Y i j ) 2 . V a r ( N j ) + E ( N j ) . V a r ( Y i j ) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGwbGaamyyaiaadkhajuaGpaWaaeWaaeaajugib8qacaWG bbqcfa4damaaBaaabaqcLbmapeGaamOAaaqcfa4daeqaaaGaayjkai aawMcaaKqzGeWdbiaacckacqGH9aqpcaWGfbqcfa4damaabmaabaqc LbsapeGaamywaSWdamaaBaaajuaGbaqcLbmapeGaamyAaiaadQgaaK qba+aabeaaaiaawIcacaGLPaaalmaaCaaajuaGbeqaaKqzadWdbiaa ikdaaaqcLbsacaGGUaGaamOvaiaadggacaWGYbqcfa4damaabmaaba qcLbsapeGaamOtaKqba+aadaWgaaqaaKqzadWdbiaadQgaaKqba+aa beaaaiaawIcacaGLPaaajugib8qacqGHRaWkcaWGfbqcfa4damaabm aabaqcLbsapeGaamOtaKqba+aadaWgaaqaaKqzadWdbiaadQgaaKqb a+aabeaaaiaawIcacaGLPaaajugib8qacaGGUaGaamOvaiaadggaca WGYbqcfa4damaabmaabaqcLbsapeGaamywaKqba+aadaWgaaqaaKqz adWdbiaadMgacaWGQbaajuaGpaqabaaacaGLOaGaayzkaaaaaa@6F77@ (7)

Here the values of E(Yij) are estimated using a Bayes’ estimate as explained below. Let E(Yij) = θij (i = 1, 2, …, Nj) be the average fielding performance scores of jth cricketer in ith ball but the actual value of θij is unknown. Let the observed average fielding performance score of jth cricketer in the ith ball called as tij, is calculated using the Fairer Fielding Performance Measure (FFPM) and it is given by,

t i j = i = 1 N j [ ( 1 β i ) k i j Y i j + β i b i k i j Y i j ] i = 1 N j [ ( 1 β i ) k i j + β i b i k i j ] MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaamiDaK qbaoaaBaaabaqcLbmacaWGPbGaamOAaaqcfayabaqcLbsacqGH9aqp juaGdaWcaaqaamaaqahabaWaamWaaeaajugibiaacIcacaaIXaGaey OeI0IaeqOSdi2cdaWgaaqcfayaaKqzadGaamyAaaqcfayabaqcLbsa caGGPaGaam4AaSWaaSbaaKqbagaajugWaiaadMgacaWGQbaajuaGbe aajugibiaadMfajuaGdaWgaaqaaKqzadGaamyAaiaadQgaaKqbagqa aKqzGeGaey4kaSIaeqOSdi2cdaWgaaqcfayaaKqzadGaamyAaaqcfa yabaqcLbsacaWGIbWcdaWgaaqcfayaaKqzadGaamyAaaqcfayabaqc LbsacaWGRbqcfa4aaSbaaeaajugWaiaadMgacaWGQbaajuaGbeaaju gibiaadMfalmaaBaaajuaGbaqcLbmacaWGPbGaamOAaaqcfayabaaa caGLBbGaayzxaaaabaqcLbmacaWGPbGaeyypa0JaaGymaaqcfayaaK qzadGaamOtaSWaaSbaaKqbagaajugWaiaadQgaaKqbagqaaaqcLbsa cqGHris5aaqcfayaamaaqahabaWaamWaaeaajugibiaacIcacaaIXa GaeyOeI0IaeqOSdi2cdaWgaaqcfayaaKqzadGaamyAaaqcfayabaqc LbsacaGGPaGaam4AaKqbaoaaBaaabaqcLbmacaWGPbGaamOAaaqcfa yabaqcLbsacqGHRaWkcqaHYoGylmaaBaaajuaGbaqcLbmacaWGPbaa juaGbeaajugibiaadkgalmaaBaaajuaGbaqcLbmacaWGPbaajuaGbe aajugibiaadUgalmaaBaaajuaGbaqcLbmacaWGPbGaamOAaaqcfaya baaacaGLBbGaayzxaaaabaqcLbmacaWGPbGaeyypa0JaaGymaaqcfa yaaKqzadGaamOtaSWaaSbaaKqbagaajugWaiaadQgaaKqbagqaaaqc LbsacqGHris5aaaaaaa@A5E5@ (8)

where     Nj = number of balls fielded by the jth fielder

Yij = fielding performance scores of the jth fielder in the ith ball

kij = weights for the fielding activity performed by the jth player in the ith ball fielded

bi = weights for the batsmen dismissed in the ith ball by jth fielder

and βi is an indicator variable where

β i = { 1 , i f t h e f i e l d i n g a c t i v i t y o n t h e i t h b a l l l e a d s t o a d i s s m i s s a l 0 , o t h e r w i s e MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVu0Je9sqqrpepC0xbbL8F4rqqrFfpeea0xe9Lq=Jc9 vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0FirpepeKkFr0xfr=x fr=xb9adbaqaaeGaciGaaiaabeqaamaabaabaaGcbaGaeqOSdi2aaS baaSqaaiaadMgaaeqaaOGaeyypa0ZaaiqaaqaabeqaaiaaigdacaGG SaGaaGzbVlaadMgacaWGMbGaaGjbVlaadshacaWGObGaamyzaiaays W7caWGMbGaamyAaiaadwgacaWGSbGaamizaiaadMgacaWGUbGaam4z aiaaysW7caWGHbGaam4yaiaadshacaWGPbGaamODaiaadMgacaWG0b GaamyEaiaaysW7caWGVbGaamOBaiaaysW7caWG0bGaamiAaiaadwga caaMe8UaamyAamaaCaaaleqabaGaamiDaiaadIgaaaGccaaMe8Uaam OyaiaadggacaWGSbGaamiBaiaaysW7caWGSbGaamyzaiaadggacaWG KbGaam4CaiaaysW7caWG0bGaam4BaiaaysW7caWGHbGaaGjbVlaads gacaWGPbGaam4CaiaadohacaWGTbGaamyAaiaadohacaWGZbGaamyy aiaadYgaaeaacaaIWaGaaiilaiaaywW7caWGVbGaamiDaiaadIgaca WGLbGaamOCaiaadEhacaWGPbGaam4CaiaadwgaaaGaay5Eaaaaaa@8A65@

The process of obtaining the values of Yij and kij is same as that of Xij and wij respectively in Saikia, Bhattacharjee & Lemmer.1

The values of tij in (8) are difficult to attain as it is dependent on Yij. To obtain the values of Yij, one has to record ball by ball information of the matches. As discussed earlier, in the absence of any software/optical observation system for converting fielding performance of players to the values of Yij the researcher has to obtain them by watching the off-line video. This may be difficult to perform in large scale i.e. for a larger number of matches. This makes the observed measure of quantification of fielding performance i.e. Yij vis-à-vis tij weak in the sense that it is not based on many matches. Thus, the average fielding performance scores of jth cricketer in ith ball i.e. θij cannot be estimated from the corresponding observed measure tij without proper refinement. Based on the available values of tij and considering θij to be a stochastic variable, a Bayesian model can be developed which can provide refined estimates for the average fielding performance score of a cricketer. This provides the motivation for the quantification of fielding performance in a Bayesian paradigm.

Thus, θij be a random variable and let E ( θ i j ) = µ i j MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGfbWdaiaacIcapeGaeqiUde3cpaWaaSbaaKqbagaajugW a8qacaWGPbGaamOAaaqcfa4daeqaaKqzGeGaaiyka8qacqGH9aqpca WG1cWcpaWaaSbaaKqbagaajugWa8qacaWGPbGaamOAaaqcfa4daeqa aaaa@4673@ and V a r ( θ i j ) = σ i j 2 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWGwbGaamyyaiaadkhapaGaaiika8qacqaH4oqCl8aadaWg aaqcfayaaKqzadWdbiaadMgacaWGQbaajuaGpaqabaqcLbsacaGGPa Wdbiabg2da98aacqaHdpWCjuaGdaqhaaqaaKqzadGaamyAaiaadQga aKqbagaajugWaiaaikdaaaaaaa@4AAB@  where 0 ≤ wj ≤ 1 (9)

This estimator is useful in improving the estimation by reducing the mean squared error towards zero. In equation (9), one part of the Bayes’ estimate of θij is determined from the observed fielding performance score of the jth player in ith ball and hence is deterministic for a given sample (i.e. tij). However, the other part of this estimate is stochastic (i.e. µij). So one can generate 95% credible interval also for the stochastic part and hence could express the estimated value of θij in terms of an interval instead of a point value. The interval estimate of a parameter is a robust approach compared to the point estimate, where one can express with a given level of confidence the expected range in which a given parameter is supposed to lie (Freund, 1992). The value of wj is given by

w j = σ i j 2 σ i j 2 + μ i j N j MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeaeaaaaaa aaa8qacaWG3bWcpaWaaSbaaKqbagaajugWa8qacaWGQbaajuaGpaqa baqcLbsapeGaeyypa0tcfa4damaalaaabaqcLbsacqaHdpWCjuaGda qhaaqaaKqzadGaamyAaiaadQgaaKqbagaajugWaiaaikdaaaaajuaG baqcLbsacqaHdpWCjuaGdaqhaaqaaKqzadGaamyAaiaadQgaaKqbag aajugWaiaaikdaaaqcLbsacqGHRaWkjuaGdaWcaaqaaKqzGeGaeqiV d0wcfa4aaSbaaeaajugWaiaadMgacaWGQbaajuaGbeaaaeaajugibi aad6ealmaaBaaajuaGbaqcLbmacaWGQbaajuaGbeaaaaaaaaaa@5C76@ (10)

The Bayes’ estimate of θij is given in (9) is also called the shrinkage estimator. This estimate shrinks or moves the individual estimate tij towards the pooled estimate µij.21 However there is no reason to consider that µij and σ i j 2 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaeq4Wdm 3cdaqhaaqcfayaaKqzadGaamyAaiaadQgaaKqbagaajugWaiaaikda aaaaaa@3E7B@ are same for all the players and thus the bootstrap technique is used to determine the values of µij and σ i j 2 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaeq4Wdm xcfa4aa0baaeaajugWaiaadMgacaWGQbaajuaGbaqcLbmacaaIYaaa aaaa@3E70@ for each player independently.

Estimating the values of µij and σ i j 2 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaeq4Wdm xcfa4aa0baaeaajugWaiaadMgacaWGQbaajuaGbaqcLbmacaaIYaaa aaaa@3E70@  using bootstrap technique

Bootstrap technique is a powerful tool for constructing inferential procedures in modern statistical data analysis. It is an alternative to the traditional statistical technique of assuming a particular probability distribution. The usual assumption about data that are being bootstrapped is that the observations are independent and identically distributed.22 It is a method for estimating the distribution of an estimator or test statistics by re-sampling the data.23 The data are generated by sampling the available data randomly with replacement. For example - from a sample, suppose we have got one statistics (assume mean) but we do not know the confidence interval of this mean or distribution of this mean. In such cases, the bootstrap technique gives more detail information on the distribution or confidence interval of this mean.

Based on the ball-by-ball fielding scores of the jth player for ith ball that he fielded, the distributional pattern (i.e. relative frequency) of the observed fielding score is arranged. As computation based on large samples will help to obtain consistent estimates of the parameters24 the bootstrap technique is used to generate 100 such samples of size 1000 each. The distribution of sample means is obtained using the Central Limit Theorem (CLT) which in turn can be gainfully applied to estimate the values of µij and σ i j 2 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqk0Jf9crFfpeea0xh9v8qiW7rqqrFfpeea0xe9Lq=Jc9 vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0FirpepeKkFr0xfr=x fr=xb9adbaqaaeGaciGaaiaabeqaamaabaabaaGcbaGaeq4Wdm3aa0 baaSqaaiaadMgacaWGQbaabaGaaGOmaaaaaaa@3C92@ . The CLT states that for any population distribution with mean µ and standard deviation σ, the sampling distribution of the sample mean X ¯ MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqk0Jf9crFfpeea0xh9v8qiW7rqqrFfpeea0xe9Lq=Jc9 vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0FirpepeKkFr0xfr=x fr=xb9adbaqaaeGaciGaaiaabeqaamaabaabaaGcbaGabmiwayaara aaaa@38FE@ is approximately normal with mean µ and standard deviation σ/√n.25 Symbolically, it can be expressed as

f ( x ¯ | μ , σ , n ) ~ a s y N ( μ , σ n ) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaamOzai aacIcaceWG4bGbaebacaGG8bGaeqiVd0Maaiilaiabeo8aZjaacYca caWGUbGaaiykaKqbaoaaxacabaqcLbsacaGG+baajuaGbeqaaKqzad GaamyyaiaadohacaWG5baaaKqzGeGaamOtaiaacIcacqaH8oqBcaGG Saqcfa4aaSaaaeaajugibiabeo8aZbqcfayaamaakaaabaqcLbsaca WGUbaajuaGbeaaaaqcLbsacaGGPaaaaa@52E2@ (12)

Thus, the values of µij and obtained in this way can be replaced in (10) and (9) and then in (6) to quantify the average fielding performance of that player in IPL-IV. This fielding performance measure (Aj) is demonstrated for 15 selected cricketers using the data from a few Twenty20 cricket matches in the fourth season of the IPL. Based on the parameters considered in Appendix-A, the relevant ball-by-ball information for the selected cricketers is collected through observing the off-line video of the matches. The video of these matches is downloaded from the website www.youtube.com. Detailed information of the matches that are considered here is provided in Table 2.

Bootstrap technique (as mentioned) is used to generalize the fielding performance of selected cricketers from the fourth season of the IPL. Accordingly, the fielding performances of the 15 cricketers are quantified by E(Ai) and can be seen in column 3 of Table 1.

Players Name

No. of Balls Fielded

Estimated Average Fielding Performance E(Aj)

Variability in Fielding Performance Var(Aj)

Credible Interval (95%)

Upper

Lower

RP Singh

22

11.132

2.038

11.154

11.11

MS Dhoni

57

26.619

3.445

26.676

26.562

V Kohli

34

18.734

4.247

18.768

18.666

Y Singh

27

15.174

2.168

15.201

15.12

R Sharma

22

11.418

2.525

11.462

11.396

Y Pathan

33

14.916

1.985

14.949

14.883

Z Khan

21

11.193

1.672

11.214

11.172

I Pathan

28

16.324

2.61

16.352

16.296

JH Kallis

22

12.034

2.588

12.078

12.012

A Reddy

18

9.378

1.078

9.414

9.36

K Pollard

27

13.824

2.362

13.851

13.743

DJ Bravo

21

13.356

1.456

13.377

13.335

JA Morkel

23

14.72

3.001

14.743

14.697

M Hayden

15

6.855

0.746

6.87

6.84

S Dhawan

19

10.849

2.265

10.868

10.811

Table 1 Fielding performance of 15 selected cricketers in IPL-IV quantified by Aj.

Fielding performance measure through scorecard of the match (Bj)

Let Xij be the performance score of the jth player for the ith factor (i = 1 represents catch and i = 2 represents run-outs) obtained from the scorecard of the remaining matches of the series. Suppose the jth fielder has taken n1 catches and is involved in n2 run-outs.  Then, Xij is defined as the sum of the wicket weights of those batsmen whose wickets have been lost due to the jth player through factor i (= 1 represents catch and = 2 represents run-outs). Thus performance score of the jth fielder,

X i j = k = 1 n i b i j k MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaamiwaS WaaSbaaKqbagaajugWaiaadMgacaWGQbaajuaGbeaajugibiabg2da 9KqbaoaaqahabaqcLbsacaWGIbWcdaWgaaqcfayaaKqzadGaamyAai aadQgacaWGRbaajuaGbeaaaeaajugWaiaadUgacqGH9aqpcaaIXaaa juaGbaqcLbmacaWGUbWcdaWgaaqcfayaaKqzadGaamyAaaqcfayaba aajugibiabggHiLdaaaa@5131@ for i = 1, 2 (13)

Where bijk = weights of the kth batsman dismissed by the jth player through the ith factor

A natural call for Xij would have been adding up the number of dismissals under the ith factor. But when a fielding activity leads to the loss of the wicket of a top order batsman it shall have a higher weight compared to a batsman lower down the order. By making use of the wicket weights for ODIs developed by Lemmer 9 the weighting factor bj is also incorporated into the formula - see Appendix-B & C. The weights depend on the batting position of the batsmen whose wicket has been taken.

Now both the factors catch and run out are in positive dimension i.e. more the number of catch and run out executed by a player better is his fielding skill. Then it is normalized as

Z i j = X i j min j ( X i j ) max j ( X i j ) min j ( X i j ) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaamOwaS WaaSbaaKqbagaajugWaiaadMgacaWGQbaajuaGbeaajugibiabg2da 9KqbaoaalaaabaqcLbsacaWGybWcdaWgaaqcfayaaKqzadGaamyAai aadQgaaKqbagqaaKqzGeGaeyOeI0scfa4aaCbeaeaajugibiGac2ga caGGPbGaaiOBaaqcfayaaKqzadGaamOAaaqcfayabaqcLbsacaGGOa GaamiwaSWaaSbaaKqbagaajugWaiaadMgacaWGQbaajuaGbeaajugi biaacMcaaKqbagaadaWfqaqaaKqzGeGaciyBaiaacggacaGG4baaju aGbaqcLbsacaWGQbaajuaGbeaajugibiaacIcacaWGybqcfa4aaSba aeaajugWaiaadMgacaWGQbaajuaGbeaajugibiaacMcacqGHsislju aGdaWfqaqaaKqzGeGaciyBaiaacMgacaGGUbaajuaGbaqcLbmacaWG QbaajuaGbeaajugibiaacIcacaWGybWcdaWgaaqcfayaaKqzadGaam yAaiaadQgaaKqbagqaaKqzGeGaaiykaaaaaaa@7256@

for i = 1 (catch), 2 (run-out) (14)

This process of normalization limit the performance indicator values within an interval of 0 and 1 which is always non-negative and free of the unit. Now considering catch and run out as performance indicators for fielding skill of a cricketer, the fielding performance measure of jth player is denoted by

B j = i = 1 2 ω i Z i j MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaamOqaS WaaSbaaKqbagaajugWaiaadQgaaKqbagqaaKqzGeGaeyypa0tcfa4a aabCaeaajugibiabeM8a3LqbaoaaBaaabaqcLbmacaWGPbaajuaGbe aajugibiaadQfajuaGdaWgaaqaaKqzadGaamyAaiaadQgaaKqbagqa aaqaaKqzadGaamyAaiabg2da9iaaigdaaKqbagaajugWaiaaikdaaK qzGeGaeyyeIuoaaaa@5142@ (15)

Where    wi = weight of the ith factor

Zij = normalized score for the ith factor of the jth player

Iyenger & Sudarshan26 assumed that the weights (wi) vary inversely as the variation in the respective variables. This conception has been thoroughly applied in this study to determine the weights for catch and run-out of fielders in cricket.

If wi represent the weight of the ith factor then it is calculated as,

ω i = C V a r j ( Z i j ) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaeqyYdC xcfa4aaSbaaeaajugWaiaadMgaaKqbagqaaKqzGeGaeyypa0tcfa4a aSaaaeaajugibiaadoeaaKqbagaadaGcaaqaamaaxababaqcLbsaca WGwbGaamyyaiaadkhaaKqbagaajugWaiaadQgaaKqbagqaaKqzGeGa aiikaiaadQfajuaGdaWgaaqaaKqzadGaamyAaiaadQgaaKqbagqaaK qzGeGaaiykaaqcfayabaaaaaaa@4EA2@ i = 1, 2 (16)

Where i = 1 2 ω i = 1 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqbaoaaqahaba qcLbsacqaHjpWDlmaaBaaajuaGbaqcLbmacaWGPbaajuaGbeaajugi biabg2da9iaaigdaaKqbagaajugWaiaadMgacqGH9aqpcaaIXaaaju aGbaqcLbmacaaIYaaajugibiabggHiLdaaaa@4825@ and C is a normalizing constant for fielding skill that follows

C = [ i = 1 2 1 V a r j ( Z i j ) ] 1 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqiVCI8FfYJH8YrFfeuY=Hhbbf9v8qqaqFr0xc9pk0xbb a9q8WqFfeaY=biLkVcLq=JHqpepeea0=as0Fb9pgeaYRXxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaKqzGeGaam4qai abg2da9KqbaoaadmaabaWaaabCaeaadaWcaaqaaKqzGeGaaGymaaqc fayaamaakaaabaWaaCbeaeaajugibiaadAfacaWGHbGaamOCaaqcfa yaaKqzadGaamOAaaqcfayabaqcLbsacaGGOaGaamOwaKqbaoaaBaaa baqcLbmacaWGPbGaamOAaaqcfayabaqcLbsacaGGPaaajuaGbeaaaa aabaqcLbmacaWGPbGaeyypa0JaaGymaaqcfayaaKqzadGaaGOmaaqc LbsacqGHris5aaqcfaOaay5waiaaw2faamaaCaaabeqaaKqzadGaey OeI0IaaGymaaaaaaa@582E@

The choice of the weights in this manner would ensure that the large variation in any one of the factor would not unduly dominate the contribution of the rest of the factors.26

In order to demonstrate this fielding performance measure (Bj), the same fifteen cricketers are considered. Data from the scorecard of the remaining matches (excluding the matches mentioned in Table 2) of the fourth season of the IPL, in which the players figured are considered. The desired fielding performance scores of cricketers in IPL-IV are calculated using equation (14). Based on equation (15), the weights of the catch and run-out are calculated and were found to be 0.496 and 0.504 respectively. The values of the fielding performance measure (Bj) for 15 cricketers based on the scorecard information can be seen in Table 3.

Sl. No.

Match No.

Home Team

Away Team

Date

Venue

1

7

Rajasthan Royals

Delhi Daredevils

12.4. 2011

Jaipur

2

24

Kolkata Knight Riders

Royal Challengers Bangalore

22.4.2011

Kolkata

3

25

Mumbai Indians

Chennai Super Kings

22.4.2011

Mumbai

4

42

Deccan Chargers

Kolkata Knight Riders

3.5.2011

Hyderabad

5

55

Rajasthan Royals

Royal Challengers Bangalore

11.5.2011

Jaipur

6

56

Chennai Super Kings

Delhi Daredevils

12.5.2011

Chennai

Table 2 Matches of IPL-IV that were used for ball-by-ball fielding details.

Player’s Name

Matches Played in IPL-IV

Matches used for Scorecard Information

Fielding Performance Measure (Bj)

Rank

K Pollard

14

12

0.690681

2

MS Dhoni

13

11

0.779687

1

R Sharma

15

12

0.567746

3

JH Kallis

16

14

0.529632

5

Y Pathan

14

12

0.567746

4

RP Singh

12

10

0.508482

6

JA Morkel

14

12

0.254241

7

IPathan

14

12

0.220313

8

V Kohli

16

14

0.182199

11

Z Khan

14

12

0.220313

9

DJ Bravo

10

8

0.220313

10

Y Singh

14

12

0.110156

14

M Hayden

16

14

0.127121

13

S Dhawan

10

9

0.182199

12

A Reddy

5

4

0

15

Table 3 Fielding performance measure (Bj) obtained from scorecard of the remaining IPL-IV matches of the selected cricketers.

Table 3 reveals that MS Dhoni is the best fielder out of fifteen selected cricketers in IPL-IV with a score of 0.779 followed by K Pollard with 0.690. However, a wicket keeper is in an advantageous position, as he gets involved in several dismissals. A Reddy is the least scorer in fielding performance and gets the last rank. However, this does not necessarily mean that A Reddy is the worst fielder of all. The fielding performance measure (Bj), defined in equation (14) is based on the number of catches and run outs in which the player was instrumental. In IPL-IV, A Reddy neither took any catches nor executed any run-out. Moreover, he played only 5 matches. Therefore, his fielding performance score value is zero. This is a huge limitation of using only Bj for the quantification of fielding performance. Thus, it is necessary to combine Bj with Aj to comprehend a players’ precise and accurate fielding performance.

Results and discussion

Now by substituting the fielding performance scores of cricketers from Bj and Aj in equation (1), one can get the ultimate fielding performance score (FPj) of 15 cricketers for IPL-IV (cf. Table 4). Table 4 reveals that the value of the fielding performance of MS Dhoni is 27.399. It indicates that MS Dhoni was the most active fielder out of 15 selected cricketers in the fourth season of the IPL. However, Dhoni might have an advantage over the others, being a wicket keeper in the team. A wicket keeper has to collect most of the balls (some of them in the form of catches) and the throws that are coming from different fielders during a match. Also, a wicket keeper has more chances of getting involved in dismissals by taking catches when the batsman edges a ball of by materializing a stumping. If we exclude MS Dhoni, V Kohli appears to be the most dynamic fielder in IPL-IV with the value of his fielding performance 18.916 followed by I Pathan with a corresponding fielding performance score 16.544. Furthermore, based on the values of credible interval column in Table 4, one can get the expected level of fielding performance for the fifteen selected cricketers.

Players Name

Aj (Col. 3 of Table 1)

Bj (Col. 4 of Table 3)

FPj

Credible Interval

Rank of the Fielders

Upper

Lower

K Pollard

13.824

0.691

14.515

14.542

14.434

7

MS Dhoni

26.619

0.78

27.399

27.456

27.342

1

R Sharma

11.418

0.568

11.986

12.03

11.964

10

JH Kallis

12.034

0.53

12.564

12.608

12.542

9

Y Pathan

14.916

0.568

15.484

15.517

15.451

4

RP Singh

11.132

0.508

11.64

11.662

11.618

11

JA Morkel

14.72

0.254

14.974

14.997

14.951

6

IPathan

16.324

0.22

16.544

16.572

16.516

3

V Kohli

18.734

0.182

18.916

18.95

18.848

2

Z Khan

11.193

0.22

11.413

11.434

11.392

12

DJ Bravo

13.356

0.22

13.576

13.597

13.555

8

Y Singh

15.174

0.11

15.284

15.311

15.23

5

M Hayden

6.855

0.127

6.982

6.997

6.967

15

S Dhawan

10.849

0.182

11.031

11.05

10.993

13

A Reddy

9.378

0

9.378

9.414

9.36

14

Table 4 Fielding performance score of 15 cricketers in IPL IV.

Conclusion

With the increasing popularity of cricket, issues related to the quantitative analysis of cricket data have gained momentum. Statisticians and data analysts are using such data for predicting match outcome, selecting the optimized balanced team, determining the value of players and so on. Most of these analyses are based on precise quantification of players’ performance. While most of the measures of quantifying players’ performance take into consideration batting and bowling skills, fielding skill is often left ignored and marginalized. With increasing importance of limited over game, especially the Tewnty20 format of cricket, saving of runs has become equally important as scoring them. Thus, the necessity of including the fielding ability of a player in the evaluation performance measurement seems essential. But in the absence of any appropriate tool to quantifying fielding measurement, this has not been probably attempted.

Saikia, Bhattacharjee & Lemmer1 developed a fielding performance measure based on the ball-by-ball information of the match. Collecting ball-by-ball information is a tedious job. In the absence of any software or optical observation system, a researcher has to watch matches ball-by-ball and perform the scoring. Thus, given the time constraint and the type of activity involved it is unlikely that information from a large number of matches can be included. Thus, this paper improvises the aforesaid measure. The current measure uses bootstrapping method to refine fielding performance scores obtained from ball-by-ball information of a few matches of the series. The index is further improvised by including the fielding performance of cricketers, through run-outs and catches (obtained from the scorecard of the other matches of the series) using a composite index.

The measure FPj defined in the paper can be used to quantify the fielding performances of cricketers for a series of matches, whether it is Test, ODI or Twenty20 cricket. Individual fielding performance scores can then be aggregated to obtain the overall fielding performance of a team. Such an attempt can depict the best fielding team amongst the teams that participated in a tournament. However, benefits of this fielding measure can be realized by coaches, players and team managements only when user-friendly software is developed that can perform all necessary calculations, once appropriate data is inserted.27,28

Acknowledgements

None.

Conflict of interest

Author declares there is no conflict of interest in publishing the article.

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