“In this game you never know enough.”—Dale Mitchell
The hit-and-run play is not highly regarded by the analytical crowd. It is considered a one-run play and, like the sacrifice bunt attempt, it garners derision from people who hate small-ball tactics. No lesser authority than Earl Weaver preached against the use of the hit-and-run play in his book, Weaver on Strategy:
I don’t have a hit-and-run sign, and I believe it’s the worst play in baseball… you often give the opposition an out on the hit-and-run play. That’s because you can’t trust the pitcher to throw a strike, so the hitter is often waving weakly at a ball that’s off the plate. That usually results in a weak grounder that gets the runner to second, but the hitter is easily retired at first. Hell, you may as well bunt! Over the course of the season, only a few guys actually get hits on the hit-and-run play, because everything must go right for it to work. About the only thing you can say for the hit-and-run is that it prevents the double-play grounder. But when you add up the caught stealing, the weak grounders, and the line-drive double plays, that advantage vanishes. I’ll take my chances with a normal swing anytime.
As far as I can tell, no one has ever published a study on the value of the hit-and-run play. Thanks to data collected by MLB Advanced Media and provided by Retrosheet, it is now possible to research this question. The pitch sequence data from Retrosheet includes a notation of runners going with the pitch back to the 2003 season. The nine seasons of data from 2003-2011 should be enough to get a good idea of the value of the hit-and-run play.
The first problem to overcome is identifying the hit-and-run plays. Except on those rare occasions where the batter or the runner missed the sign, we know that the runner should be going and the batter should be swinging. However, not all such plays will be a hit-and-run.
First, how accurate are the stringers at identifying pitches on which the runners were going? The best benchmark I could find was that the runner was noted as going on about 90 percent of pitches resulting in a stolen base or caught stealing. So we are probably missing at least 10 percent of the hit-and-run plays. However, since I did not see a big difference in the quality of stringer data between parks, the data we have is hopefully still of good quality for addressing questions about the hit-and-run.
It is helpful to begin with a definition of the hit-and-run play so that we know what we are looking for. In the course of researching this topic, I read several good definitions, but by far the best exposition of the hit-and-run and the strategies involved appears in Keith Hernandez’s Pure Baseball, pp. 20-29.
The riskiest option, the hit-and-run, is one of the more strategically complex plays in the game. I don’t know any way to get into the subject other than at length because, as I mentioned, experience has taught me that some big leaguers don’t fully understand what the play is all about, when it’s a good idea, when it’s a terrible idea. So here goes. Be patient—the in’s and out’s of the hit-and-run go to the heart of the baseball strategy, and you have to understand them to understand the game.
Hernandez identifies the following characteristics of a hit-and-run play:
(1) a runner on first base, who by running forces a middle infielder to cover second in anticipation of a throw from the catcher, thereby opening a hole in the infield defense for the batter
(2) in a ball-strike count where the pitcher needs to throw a strike or something close
(3) not a two-strike count, because you cannot force the batter to strike out while attempting to protect the runner
(4) not a three-ball count, because the batter walks on a bad pitch and should take power swings at a good pitch
(5) usually with no outs, occasionally with one out, but never with two outs, because a defensive swing yielding a ground ball is likely the third out
(6) not with a power hitter at the plate.
He discussed additional nuances and strategies around the hit-and-run play that are well worth reading, but this summary hits the main points. I ended up with a definition very similar to the one outlined by Hernandez.
Let’s look at the situations where there was a runner at first base who ran with the pitch. The runner should be more likely to get caught stealing on a hit-and-run play where the batter swung and missed than if it were a straight steal and the batter took the pitch. Of course, it also may have been a straight steal if the batter swung and missed of his own volition.
I do not know any way of identifying or quantifying exactly which plays were hit-and-runs. However, the situations where the stolen base success rate was much lower when the batter swung than if the batter took are more likely to be hit-and-run situations. These likely situations, in combination with the fact that the batter swung and the runner ran with the pitch, should help us to identify a high proportion of the hit-and-run plays mixed with only a few straight steals.
Hernandez argued that the hit-and-run play was most likely to be used with no outs, where the following batters had the most opportunities to bring the baserunner home and the cost of a defensive swing leading to a groundball out was the lowest. Let’s see if we can pick that up in the stolen base success rate based upon the number of outs. The following table shows the data for situations with less than two strikes.
Outs |
Stolen Base Success Rate |
||
|
Batter Takes |
Batter Swings |
Difference |
0 |
79.0% |
60.4% |
-18.6% |
1 |
77.3% |
64.3% |
-13.0% |
2 |
79.0% |
81.1% |
+2.2% |
When the batter swung and missed, the runner was caught stealing much more often with none out or one out than with two outs. This data is a good indicator that hit-and-run plays almost never happen with two outs. It also suggests that the hit-and-run is used a little more often with none out than it is with one out, though without having a good estimate yet for the stolen base success rate on pure hit-and-run plays, it is hard to calculate exactly how much more often.
Let’s look at the same data, but this time for ball-strike counts. I will include all of the ball-strike counts for comparison, even though hit-and-run plays are very unlikely to be executed with two strikes or three balls. We can check if the data backs up our assumption. Because I determined that two-out situations do not contain many hit-and-run plays, I will restrict the data in the following table to situations with less than two outs.
Count |
Stolen Base Success Rate |
||
|
Batter Takes |
Batter Swings |
Difference |
0-0 |
80.5% |
58.3% |
-22.2% |
1-0 |
76.8% |
60.7% |
-16.1% |
2-0 |
84.3% |
72.4% |
-11.9% |
3-0 |
90.2% |
n/a |
n/a |
0-1 |
77.7% |
72.8% |
-4.8% |
1-1 |
75.6% |
59.3% |
-16.2% |
2-1 |
72.6% |
62.3% |
-10.3% |
3-1 |
68.9% |
63.9% |
-5.0% |
0-2 |
82.5% |
84.1% |
+1.6% |
1-2 |
79.5% |
84.7% |
+5.2% |
2-2 |
78.4% |
72.3% |
-6.1% |
3-2 |
57.0% |
54.0% |
-3.1% |
The five ball-strike counts with a difference of more than 10 percent in stolen base success rate were 0-0, 1-0, 2-0, 1-1, and 2-1. There was some difference on the 0-1 and 3-1 counts, but it was small enough that we probably do not lose many actual hit-and-run plays if I exclude those counts from our list of likely hit-and-run situations.
The score of the game is another possible factor. Teams are unlikely to pursue strategies that put baserunners at risk when they are trailing by a large number of runs. However, teams are more liberal with the hit-and-run play relative to the score than I expected. The following graph shows the change in stolen base success rate when the batter swings and misses, given various score differentials for the batting team. The data in the graph is for situations with less than two outs and in the five likely hit-and-run ball-strike counts I identified.
The stolen base success rate decreased by about 19 percent when the score was within three runs. It decreased by about nine percent when the score of the two teams was exactly four runs apart. Though the runner-going situations with a four-run differential seem to include some straight steals, I will include them in our definition of a hit-and-run situation.
Finally, we arrive at the definition used for a hit-and-run situation in this study: (1) runner on first, bases not loaded, (2) none or one out, (3) a ball-strike count of 0-0, 1-0, 2-0, 1-1, or 2-1, and (4) the team leading or trailing by four runs or less. If the runner went on the pitch and the batter swung in such a situation, I will consider it a likely hit-and-run play.
The batter’s position in the lineup affects the likelihood of seeing a hit-and-run play in any given hit-and-run situation.
The second hitter is the most likely position in the lineup to be involved in a hit-and-run play, particularly on the first time through the order. The fourth and fifth-place hitters are relatively unlikely to be involved in hit-and-run plays. The probability of a hit-and-run play increases again at the bottom third of the order.
I could further screen our likely hit-and-run situations by removing the third through sixth spots in the lineup. However, I suspect the variation in hit-and-run rate is more an indication of a decision based upon hitter quality. It might vary more widely based upon specific personnel and managerial preference than some of the criteria that are more closely tied to the game situation. Thus, I chose not to use lineup position as part of the definition for a hit-and-run situation.
Here is how the hit-and-run plays break down by team from 2003-2011, as best I was able to count them using the Retrosheet data and the above definition of a hit-and-run situation.
Batting Team |
Hit-and-Run Plays |
Opportunities |
Hit-and-Run Pct. |
LA Angels |
536 |
8319 |
6.4% |
St. Louis |
535 |
8652 |
6.2% |
Detroit |
416 |
8542 |
4.9% |
Minnesota |
395 |
8404 |
4.7% |
Chicago Sox |
387 |
8272 |
4.7% |
Tampa Bay |
354 |
7828 |
4.5% |
LA Dodgers |
378 |
8551 |
4.4% |
Toronto |
368 |
8471 |
4.3% |
Seattle |
359 |
8350 |
4.3% |
Kansas City |
342 |
8222 |
4.2% |
San Francisco |
347 |
8441 |
4.1% |
Houston |
334 |
8136 |
4.1% |
Montreal/Washington |
335 |
8239 |
4.1% |
Cincinnati |
289 |
8137 |
3.6% |
Pittsburgh |
286 |
8072 |
3.5% |
Florida |
288 |
8252 |
3.5% |
San Diego |
292 |
8381 |
3.5% |
Texas |
275 |
8150 |
3.4% |
Colorado |
284 |
8421 |
3.4% |
NY Yankees |
303 |
9109 |
3.3% |
Milwaukee |
273 |
8220 |
3.3% |
NY Mets |
271 |
8332 |
3.3% |
Baltimore |
271 |
8406 |
3.2% |
250 |
8370 |
3.0% |
|
Arizona |
240 |
8101 |
3.0% |
Cleveland |
248 |
8449 |
2.9% |
Oakland |
202 |
8793 |
2.3% |
Philadelphia |
188 |
8608 |
2.2% |
Atlanta |
178 |
8695 |
2.0% |
Boston |
163 |
9045 |
1.8% |
It is worth noting that American League teams used the hit-and-run slightly more often than National League teams during this period.
Here are the totals year by year for each team.
Team |
2003 |
2004 |
2005 |
2006 |
2007 |
2008 |
2009 |
2010 |
2011 |
ANA |
45 |
69 |
60 |
67 |
64 |
55 |
37 |
67 |
72 |
ARI |
26 |
41 |
36 |
16 |
14 |
22 |
15 |
31 |
39 |
ATL |
20 |
29 |
31 |
14 |
13 |
15 |
14 |
20 |
22 |
BAL |
20 |
47 |
31 |
26 |
25 |
44 |
27 |
26 |
25 |
BOS |
11 |
12 |
19 |
30 |
26 |
21 |
12 |
11 |
21 |
CHA |
32 |
35 |
50 |
31 |
37 |
37 |
52 |
65 |
48 |
CHN |
32 |
19 |
42 |
43 |
23 |
25 |
20 |
20 |
26 |
CIN |
16 |
22 |
24 |
19 |
24 |
38 |
36 |
54 |
56 |
CLE |
37 |
31 |
20 |
22 |
25 |
27 |
19 |
33 |
34 |
COL |
21 |
24 |
37 |
26 |
22 |
23 |
36 |
36 |
59 |
DET |
47 |
39 |
57 |
54 |
46 |
44 |
51 |
49 |
29 |
FLO |
41 |
42 |
24 |
48 |
28 |
18 |
30 |
29 |
28 |
HOU |
25 |
37 |
56 |
40 |
39 |
35 |
37 |
37 |
28 |
KCA |
28 |
44 |
35 |
33 |
40 |
34 |
40 |
42 |
46 |
LAN |
27 |
17 |
49 |
53 |
44 |
58 |
45 |
48 |
37 |
MIL |
35 |
42 |
29 |
30 |
26 |
41 |
19 |
21 |
30 |
MIN |
41 |
39 |
46 |
56 |
57 |
42 |
50 |
17 |
47 |
MON |
45 |
50 |
41 |
52 |
15 |
26 |
35 |
36 |
35 |
NYA |
36 |
23 |
25 |
39 |
47 |
60 |
28 |
27 |
18 |
NYN |
37 |
24 |
40 |
23 |
34 |
30 |
34 |
28 |
21 |
OAK |
25 |
14 |
23 |
18 |
29 |
15 |
21 |
37 |
20 |
PHI |
17 |
24 |
23 |
13 |
30 |
25 |
13 |
23 |
20 |
PIT |
51 |
49 |
38 |
22 |
31 |
15 |
29 |
16 |
35 |
SDN |
31 |
35 |
38 |
28 |
25 |
18 |
28 |
39 |
50 |
SEA |
30 |
41 |
38 |
36 |
60 |
53 |
26 |
47 |
28 |
SFN |
26 |
44 |
46 |
28 |
38 |
57 |
33 |
35 |
40 |
SLN |
56 |
61 |
73 |
69 |
58 |
50 |
44 |
61 |
63 |
TBA |
24 |
28 |
41 |
59 |
36 |
32 |
24 |
38 |
72 |
TEX |
37 |
22 |
15 |
16 |
27 |
24 |
30 |
53 |
51 |
TOR |
34 |
48 |
59 |
61 |
40 |
39 |
18 |
14 |
55 |
Mike Scioscia’s teams led the major leagues four times in hit-and-run plays, and Tony La Russa’s teams led three times. For managers who spent the bulk of a season with a team and managed multiple years, here are those with most and the fewest hit-and-run plays. (I did not have managerial data split out at the game level in order to divide season data on teams with multiple managers in one season.)
Manager |
Team |
Hit-and-run |
Years |
Hit-and-Run/Yr. |
Mike Scioscia |
LA Angels |
536 |
9 |
60 |
Tony LaRussa |
St. Louis |
535 |
9 |
59 |
Toronto |
160 |
3 |
53 |
|
Detroit |
143 |
3 |
48 |
|
Montreal |
188 |
4 |
47 |
|
Pittsburgh |
138 |
3 |
46 |
|
Jim Leyland |
Detroit |
273 |
6 |
46 |
Houston |
135 |
3 |
45 |
|
Chicago Sox |
355 |
8 |
44 |
|
Minnesota |
395 |
9 |
44 |
|
Joe Maddon |
Tampa Bay |
261 |
6 |
44 |
League Avg. |
… |
… |
… |
35 |
Cleveland-Seattle |
209 |
8 |
26 |
|
Oakland |
102 |
4 |
26 |
|
Florida-Atlanta |
98 |
4 |
25 |
|
Texas-Baltimore |
115 |
5 |
23 |
|
Philadelphia |
147 |
7 |
21 |
|
Philadelphia |
41 |
2 |
21 |
|
Pittsburgh |
60 |
3 |
20 |
|
Oakland-Milwaukee |
120 |
6 |
20 |
|
Atlanta |
156 |
8 |
20 |
|
Boston |
152 |
8 |
19 |
|
Toronto |
32 |
2 |
16 |
Subject to the limitations of what I can discern from the data, we now have a pretty good idea of when hit-and-run plays occurred and which teams used them. But, is the hit-and-run play a good idea? That turns out to be a question fraught with selection bias.
Teams that attempted the hit-and-run play scored 0.11 runs on the play and 0.69 runs in the remainder of the inning on average, compared to 0.17 runs scored on the play and 0.70 runs in the remainder of the inning by teams that did not attempt the hit-and-run play in hit-and-run situations. On its face, it seems that the hit-and-run play cost teams about .06 runs per play. Before I wade through some of the factors that bias this simple answer, let’s examine how the results of hit-and-run batters differ from those of the batters who do not hit-and-run in the same situations.
The batters who attempted the hit-and-run play ended that plate appearance with an average batting line of .294/.323/.403, as compared to the batting line of .267/.324/.419 for the batters who did not attempt the hit-and-run play. At first take, the hit-and-run appears to confer about 26 more points of batting average, at the cost of some walks and extra base hits. Since the two pools of batters have very similar batting average skills, as we will discuss in more detail, this difference is largely attributable to the hit-and-run play. Creating the hole in the infield defense really is a valuable advantage.
The hit-and-run attempt also significantly cut the rate of walks, strikeouts, and the double play. It is no surprise that swinging at pitches early in the count, perhaps even bad pitches, cut the walk rate, dropping it from seven percent of plate appearances by batters who did not hit-and-run in these situations to only four percent of plate appearances by batters who attempted the hit-and-run play. The strikeout rate also dropped for hit-and-run batters, to 13 percent of plate appearances, compared to 15 percent for batters who did not execute the hit-and-run. Presumably, the increase in balls in play early in the count had a greater effect than did being forced to swing at bad pitches to protect the runner. The double play rate dropped from 13 percent of plate appearances when the hit-and-run was not attempted to nine percent when the hit-and-run was attempted. That rate includes both groundball and line drive double plays.
Baserunner advancement is another obvious consequence of the hit-and-run play. Extra runners caught stealing roughly balanced out the reduction in double plays, leaving about the same number of outs and runners on base on average whether or not a hit-and-run was attempted. However, the runner from first base had a better chance of moving up to second or third base on a hit-and-run play. The drop in extra-base hits that accompanied the hit-and-run slightly decreased the runners’ chance of scoring from first base as a result of that plate appearance.
Runner Result |
Hit-and-Run Play |
No Hit-and-run |
Difference |
Out |
19% |
19% |
0% |
1st Base |
21% |
37% |
-16% |
2nd Base |
41% |
32% |
+9% |
3rd Base |
15% |
8% |
+7% |
Scored |
4% |
5% |
-1% |
Now that we have some idea of the typical results of the hit-and-run play, let’s examine some of the potential biases in our data, particularly in the average runs scored in the inning during and after the hit-and-run play.
One obvious consideration is that the number of outs affects the chances of scoring. The overall run scoring following the hit-and-run play looks better than it really was because the hit-and-run play was used more frequently with no outs, when run scoring expectations were highest.
|
Runs with No Outs |
Run with One Out |
||||
On Play |
Rest of Inn. |
Total |
On Play |
Rest of Inn. |
Total |
|
H-R Play |
.09 |
.90 |
1.00 |
.13 |
.50 |
.62 |
No H-R |
.14 |
.93 |
1.07 |
.18 |
.52 |
.70 |
Difference |
-.05 |
-.02 |
-.08 |
-.05 |
-.02 |
-.08 |
I included as potential hit-and-run situations those with runners on first and second or runners on first and third. However, teams are much less likely to hit and run with multiple runners on base. If I restrict the analysis to the hit-and-run situations with only a runner on first base and the other bases empty, here are the run-scoring results.
|
Runs with No Outs |
Run with One Out |
||||
On Play |
Rest of Inn. |
Total |
On Play |
Rest of Inn. |
Total |
|
H-R Play |
.08 |
.89 |
.97 |
.07 |
.49 |
.55 |
No H-R |
.07 |
.82 |
.89 |
.08 |
.45 |
.53 |
Difference |
.00 |
+.07 |
+.08 |
-.01 |
+.03 |
+.02 |
Once I have adjusted for the number of outs and made sure the baserunner state is the same, the hit-and-run play is a net gain for run scoring in the inning, particularly when it is attempted with no outs.
The quality of the batters and pitchers involved is another important concern. I calculated the average performance of batters and pitchers during the period 2003-2011 and weighted the result by the number of times they appeared in a hit-and-run situation. I compared it to the average performance of the batters and pitchers during 2003-2011, weighted by the number of times they attempted a hit-and-run play.
The pitchers were of similar quality in both pools, with an average of .004 fewer runs allowed than average, as calculated from their linear weights runs allowed. The batters who attempted hit-and-run plays, however, were noticeably worse hitters than those who did not attempt hit-and-run plays in hit-and-run situations. The batters who attempted a hit-and-run had an average batting line of .274/.342/.419, or +0.003 runs above average per plate appearance, as compared to the batters who did not attempt a hit-and-run, who had an average batting line of .275/.349/.448, or +.014 runs above average per plate appearance.
Before I add the difference in batter quality to the ledger in favor of hit-and-run plays, however, we need to consider the effect of the lineup order. Because more hit-and-run plays occur before the middle of the order comes up, the likelihood of a runner subsequently being driven in by the big bats is higher. Conversely, fewer hit-and-run plays occur ahead of the bottom of the lineup, where the weaker hitters are less likely to drive the runners home.
We can compare the number of runs scored in the remainder of the inning for attempted hit-and-run plays to the runs scored when a hit-and-run play was not attempted in a hit-and-run situation for each spot in the lineup. Here again, I restrict the data to those situations where there was only a single runner on base, in order to compare on a level playing field, or at least as level as I can make it.
The hit-and-run play is most advantageous in the second, third, and ninth spots in the lineup, and it is a net negative only for the fifth-place hitter, although I am not controlling here for the quality of batter involved in the hit-and-run plays, other than as represented by the lineup position.
The preceding graph shows the weighted average of the no-out and one-out situations. We can also look at them separately.
The no-out situation shows a bigger advantage for the hit-and-run attempt over the one-out situation at every lineup spot except for the second and sixth-place hitters.
In order to combine the remainder-of-inning scoring advantage with the batter quality advantage for a total hit-and-run advantage, I need to adjust both for lineup position. After adjusting for the lineup, teams scored .057 more runs when they attempted a hit-and-run play as compared to when they did not. After adjusting for the lineup spot, the quality of the batters who did not hit-and-run was .005 runs per plate appearance better than that of the batters who did hit-and-run. Thus, the advantage for attempting a hit-and-run play during 2003-2011 appears to be about .061 runs on average.
That is a much larger number than I expected when I embarked on this research. I have attempted to remove as much of the selection bias as I could reasonably identify. It is possible that I have overlooked some bias or used a mistaken assumption, but every direction from which I came at the analysis pointed to the hit-and-run being a positive offensive play in most circumstances in which it was attempted.
We have already considered how the number of outs and the lineup position affect the advantage to be gained via a hit-and-run play. The ball-strike count also plays a role. The more favorable the count is to the hitter, the less likely that the batter will be forced to swing at a pitch he does not like. On the other hand, the same is true if the batter is not protecting the runner, and in that case, he may be more selective and take more powerful swings.
Ball-Strike Count |
Hit-and-Run Attempt Pct. |
Hit-and-Run Advantage (R/PA) |
0-0 |
1.2% |
+.041 |
1-0 |
3.2% |
+.050 |
2-0 |
1.9% |
+.031 |
1-1 |
3.2% |
+.026 |
2-1 |
6.6% |
-.026 |
The biggest advantage for the hit-and-run play comes early in the count, on the first pitch or at 1-0. However, 2-1 is the most popular count on which to attempt the hit-and-run play, even though the average result of the play in that count is a net negative.
With this in mind, let’s see which teams did the best job of turning the hit-and-run play into extra runs over the course of 2003-2011. This time I am considering only the plays with a single runner on base in order to compare apples to apples, as explained earlier, so the “plays” totals will be slightly lower than those listed in the previous team table.
Batting Team |
H-R Plays |
Oppor. |
H-R% |
Avg. Run Advantage |
Adj. for Batter Quality |
Total Net Runs |
NY Yankees |
289 |
6512 |
4.4% |
0.288 |
0.294 |
85 |
San Diego |
263 |
6143 |
4.3% |
0.175 |
0.180 |
47 |
LA Dodgers |
335 |
6302 |
5.3% |
0.123 |
0.132 |
44 |
Houston |
316 |
6011 |
5.3% |
0.092 |
0.111 |
35 |
Florida |
264 |
6040 |
4.4% |
0.127 |
0.133 |
35 |
LA Angels |
492 |
6158 |
8.0% |
0.060 |
0.068 |
34 |
Milwaukee |
245 |
6015 |
4.1% |
0.129 |
0.136 |
33 |
Detroit |
390 |
6193 |
6.3% |
0.072 |
0.083 |
32 |
Boston |
151 |
6379 |
2.4% |
0.176 |
0.189 |
28 |
St. Louis |
495 |
6149 |
8.1% |
0.028 |
0.052 |
26 |
Chicago Sox |
359 |
6136 |
5.9% |
0.054 |
0.069 |
25 |
NY Mets |
248 |
6163 |
4.0% |
0.085 |
0.095 |
24 |
Philadelphia |
172 |
6232 |
2.8% |
0.138 |
0.137 |
24 |
Seattle |
329 |
6176 |
5.3% |
0.060 |
0.068 |
22 |
Pittsburgh |
265 |
5923 |
4.5% |
0.073 |
0.084 |
22 |
Toronto |
324 |
6060 |
5.3% |
0.060 |
0.068 |
22 |
Baltimore |
256 |
6163 |
4.2% |
0.080 |
0.086 |
22 |
Minnesota |
371 |
6177 |
6.0% |
0.049 |
0.058 |
22 |
Mont./Washington |
301 |
6068 |
5.0% |
0.061 |
0.067 |
20 |
Cincinnati |
267 |
6005 |
4.4% |
0.058 |
0.063 |
17 |
Texas |
255 |
6001 |
4.2% |
0.051 |
0.062 |
16 |
Kansas City |
324 |
6052 |
5.4% |
0.010 |
0.016 |
5 |
Colorado |
259 |
6151 |
4.2% |
0.006 |
0.015 |
4 |
Chicago Cubs |
241 |
6111 |
3.9% |
-0.017 |
0.000 |
0 |
Atlanta |
165 |
6149 |
2.7% |
-0.014 |
-0.006 |
-1 |
Tampa Bay |
323 |
5980 |
5.4% |
-0.010 |
-0.006 |
-2 |
San Francisco |
301 |
6073 |
5.0% |
-0.027 |
-0.018 |
-5 |
Oakland |
195 |
6282 |
3.1% |
-0.052 |
-0.042 |
-8 |
Arizona |
216 |
5966 |
3.6% |
-0.053 |
-0.048 |
-10 |
Cleveland |
217 |
6085 |
3.6% |
-0.111 |
-0.101 |
-22 |
Across nine seasons, a handful of teams have managed to add a total of 30 runs or more by using the hit-and-run play. The average team has added about two runs per season on hit-and-run plays.
Which batters hit and run most often? Here are the leaders from 2003-2011. I have also listed each batter’s success percentage in hit-and-run situations with a runner at first base only, where a successful hit-and-run play is defined as one that advanced the baserunner. League average was a 60 percent success rate.
H-R Plays |
Opportunities |
H-R Pct. |
Success% |
|
135 |
1009 |
13% |
64% |
|
95 |
528 |
18% |
55% |
|
90 |
851 |
11% |
70% |
|
69 |
728 |
9% |
57% |
|
66 |
549 |
12% |
67% |
|
65 |
691 |
9% |
65% |
|
64 |
956 |
7% |
64% |
|
61 |
680 |
9% |
61% |
|
59 |
660 |
9% |
59% |
|
58 |
630 |
9% |
62% |
|
57 |
609 |
9% |
72% |
Among others of interest, Jonathan Herrera attempted a hit-and-run play in 27 percent of his opportunities, Skip Schumaker had an 86 percent success rate at advancing the runner from first, and Albert Pujols attempted a hit-and-run play in three percent of his opportunities (with a 49 percent success rate). No word on how many of those plays he called himself.
Here are the baserunners who were on first base for the most hit-and-run attempts, along with their stolen base and caught stealing totals when the batter swung and missed in such situations. Since most of these players are regular basestealers, some of the plays I have classified here as hit-and-runs were probably actually straight steals.
Runner |
H-R Plays |
Opportunities |
H-R Pct. |
||
144 |
1250 |
12% |
17 |
5 |
|
89 |
1074 |
8% |
12 |
5 |
|
86 |
1506 |
6% |
13 |
3 |
|
75 |
776 |
10% |
11 |
7 |
|
64 |
690 |
9% |
5 |
0 |
|
62 |
1146 |
5% |
8 |
1 |
|
60 |
660 |
9% |
5 |
7 |
|
58 |
954 |
6% |
7 |
4 |
|
56 |
870 |
6% |
7 |
2 |
|
56 |
712 |
8% |
3 |
2 |
The hit-and-run is far from the worst play in baseball. For a small-ball tactic, it has been quite successful over the past nine seasons, increasing scoring by .06 runs per attempt on average. The value of the hole in the infield defense is real, adding about 27 points to the batting average of the hitter. The double plays avoided by executing the hit-and-run offset the runners caught stealing on the play, and the extra bases gained by the runner when the ball is put in play are enough to move the play into the plus column overall.
However, there are some situations where the hit-and-run attempt made less sense and was a barely positive or even a net negative play—with the fourth and fifth hitters in the lineup up, with one out, or in the popular ball-strike count of 2-1.
Additional research could be done to fine-tune the definition of hit-and-run situations. In particular, I suspect that some of the situations with runners on first and second or runners on first and third could be removed. It would also be interesting to examine the detailed PITCHf/x data for the hit-and-run plays in the seasons for which that data is available.
Furthermore, future studies on the stolen base breakeven point or on the value of catcher defense in controlling the running game should probably incorporate what we have learned about the hit-and-run play.
The information used here was obtained free of charge from and is copyrighted by Retrosheet. Interested parties may contact Retrosheet at 20 Sunset Rd., Newark, DE 19711.
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Most interesting to me is that the effect of calling for a hit and run in the "classic" 2-1 count is negative...
I know in Strat-O-Matic I'm likely to use it mostly to stay out of double plays with a low on base, "b" hit and run, "gb(a)" machine at the plate, but in Strat you have all the percentages beforehand, of course, and the count never comes into play.
When a guy's on base against a particular pitcher is 27% or worse and he's a 25% hit and run guy with a starred base stealer on first I tend to go for it.
And it does suck when a walk turns into a ground out or they still turn a double play on an (x) play, but it sure is sweet when it's a single from the SADV chart, the runner takes third, and it "makes the manager look like a genius."
I've noticed that Ron Washington uses the hit and run a lot with the Rangers, but I it looked your data was not mature enough to have specific data points for him as a manager. Are there a few of the other managers with less than 6-7 years experience doing the same thing?
Bravo, Mike!
Great stuff as always.
MLB clubs are welcome to come knocking. I'll answer the door.
Quick question that wasn't immediately clear to me: are foul balls included in your H+R total, or just plays with either a swing and miss or a ball in play?
I spent a little time looking at whether contact hitters and groundball hitters got more advantage from the hit-and-run play, but I wasn't able to deal with the selection bias issues there to my satisfaction prior to writing this up.
Your observation would be interesting to test even outside the context of the hit-and-run play.
For my part, I was surprised to see the Molina brothers among the leaders at executing the hit-and-run play. The other names made more sense to me.
BTW, I was a huge Keith Hernandez fan in my youth (even after news of his cocaine use broke). But his massive ego in the announcers' booth has severely diminished my respect for him. The excerpt you provide from his book rekindled my respect for Keith Hernandez as a ballplayer. He clearly had a strong and nuanced understanding of the hit-and-run, and probably of baseball in general. So glad you shared his insights along with yours.
I love Pure Baseball. It's one of the best thinking-about-the-game books I've read.
I believe it was 2 pitches later, the runners took off and Williams swung, hitting a hard liner just to Edgar Renteria's left. Renteria caught the ball, touched second 2 strides later, and tagged the runner coming from first for the Unassisted Triple Play.
http://www.retrosheet.org/boxesetc/2003/B08100SLN2003.htm
However, I don't know whether the visiting or home team has an advantage in making it successful. I wouldn't see why, unless it was coupled to an advantage in personnel. It's very hard to study things by inning because various parts of the lineup come up more often in certain innings. If you have a big enough sample, you can split both by inning and lineup position, but I don't have the luxury of that sample size with this data set.
You see, Mike, I don’t think you can combine the two types of base runners. If you do, of course you are going to come up with a postive result (for the hit and run) as long as there are enough good base stealers in your sample (even if those were indeed hit and runs with those runners at first and not straight steals, although clearly some of your hit and runs are actually straight steals, especially with good base stealers on first).
Rather than compare the hit and run to no hit and run, you should be comparing the hit and run to:
1) a steal by those base runners and no hit and run.
2) no hit and run with a non-base stealer at first.
The ONLY thing we care about is what happens with a non-base stealer at first!
We already know the answer with a good base stealer at first. The answer is that a hit and run is better than no hit and run (with the base runner not going), BUT a steal with no hit and run is likely better than that!
So if the answer is that a hit and run with a non-base stealer at first is wrong and a straight steal (not all the time) with a good base stealer at first is better than a hit and run, then you would still get the results you are getting, but a hit and run would still be never correct!
Does everyone understand that?
But as a result I also disagree with how you're framing it. The only thing we care about is what happens with a hit-and-run play, regardless of the quality of the baserunner. If the baserunner quality is biasing the results, I need to adjust for that. My preliminary look said there was not a big bias there.
I believe that either the good-basestealer, straight-steal group is so small in these situations that it's insignificant to the results, or good basestealers on first base in these counts don't have a high enough run expectation to move the results all that much. But it's worth double checking.
I divided the runners on first base into four equal groups based upon their stolen base attempt rate over the period 2003-2011. I defined the stolen base attempt rate as (SB+CS)/(singles+UBB+HBP).
The fastest runners do get more advantage out of the hit-and-run play than do the slowest runners.
The results are presented in aggregate for a several year period. What do the year-to-year results look like in terms of consistency? The question is partially aimed at determining if the hit-and-run success a function of skill or luck and partially aimed at determining if it is a reliable strategy (thinking in the context of AVG, which tends to exhibit a fair amount of year-to-year variation).
Also, and you alluded to this a little bit, how much does hit-and-run success, or lack thereof, depend on the quality of the hitters in terms of AVG, SLG, and OBP? If a team struggles to score runs, then should it hit-and-run more often or less often?
Given choice between a straight steal and a hit-and-run, is there a breakpoint at which one strategy is favored over the other? Is there a point at which the preferred tatic is to do neither and simply let the batter bat?
In terms of year-to-year consistency, I'm not sure exactly which parameter you're asking about. If you asking about the average net run value for a hit-and-run attempt, I don't know that year-to-year consistency would indicate anything. The success of the play is very dependent on the situation. There were just over 8600 hit-and-run plays that I identified. The further you break down the sample from there, the more you have to be concerned about the situation. The samples with 1000 or more plays seemed to have a decent mix of situations, and the samples with 100 or so plays are quite situation-dependent.
In terms of various individual rates, like the success percentage for advancing baserunners with the play, or the caught stealing percentage when the batter swings and misses, those were pretty stable year to year, but I don't know if that's what you were asking about.
The Yankees fan in me, however, is most blown away by the Yanks having added 85 runs from 2003-2011 by the hit and run, significantly more than any other team. Did most of those runs come under Torre (2003-2007) or Girardi (2008-2011)? The Yanks seemed to hit and run a lot more under Torre (2008 aside), but I wonder if Girardi is employing it more selectively (and thus more successfully)?
As a side note, why isn't Torre on the manager list? He managed all but one year from 2003-2011.
Note that though the Yankees scored a lot of runs on hit and run plays, they only had 289 from 2003 to 2011 for an average of about 32 hit and run plays a year. Perhaps they score so many runs just because they have quality hitters that don't strike out mouch?
Joe Torre was at 321 hit-and-run plays in eight seasons, for an average of 40/year, which is why he didn't make the list of leaders.
The one table in which I probably have the least confidence in the whole study is the number of runs gained by each team. When I looked at the league as a whole, I spent a lot of time looking at all the numbers from different angles. For the teams, I mostly assumed that what applied to the league applied to each team, with the exception that I looked at the quality of hitters on each team that were asked to execute the hit-and-run.
So there are a number of situational biases that I accounted for at the league level that might not apply quite as well to a given team.
In particular, the performance of the batters following the hit-and-run attempt might have biased the results for a team. I looked into this some for the Yankees, and if you simply looked at the bases gained, rather than runs scored, and the RE24 values for those bases, the Yankees total is more like 40-50 runs gained rather than 85.
There wasn't a big difference between Torre's Yankee teams and Girardi's teams. If you use the runs-scored method, Torre's teams come out a bit better, and if you use the bases-gained method, Girardi's teams come out a bit better.