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The Eministat library

Suppose you have two data sets, obtained from benchmarks of programs. The eministat library then computes basic statistical properties of the data sets and reports these on stdout. It can be used from the Erlang shell to verify that two samples are different according the the student's t-test.

Acknowledgements

This program owes everything to Poul-Henning Kamp and his ministat application for FreeBSD, which was the first inspiration. It also draw a lot on Bryan O'Sullivan's Criterion benchmark suite of Haskell fame. Finally, it uses some ideas by Brent Boyer for computing outlier variance.

Examples

Suppose you have measured the leaf thickness in (μs) of a Ligustrum, one in the sun and one in the shade. You wonder if there is any measurable difference between these two data sets. This is the question eministat can answer:

7> eministat:x(95.0, Sun, Shade).
x sun
+ shade
+--------------------------------------------------------------------------+
|x      + + +      x   +   +          *  x                                x|
|                                     +  x                                x|
|             |__________________________A__________________________|      |
|         |___________AM___________|                                       |
+--------------------------------------------------------------------------+
Dataset: x N=7 CI=95.0000
Statistic     Value     [         Bias] (Bootstrapped LB‥UB)
Min:            100.000
1st Qu.         150.000
Median:         210.000
3rd Qu.         210.000
Max:            300.000
Average:        210.000 [     0.144571] (      158.571 ‥       258.571)
Std. Dev:       73.0297 [     -6.93032] (      46.0848 ‥       101.770)

Outliers: 0/0 = 0 (μ=210.145, σ=66.0994)
        Outlier variance:      0.843583 (severe, the data set is probably unusable)

------

Dataset: + N=7 CI=95.0000
Statistic     Value     [         Bias] (Bootstrapped LB‥UB)
Min:            120.000
1st Qu.         125.000
Median:         160.000
3rd Qu.         170.000
Max:            200.000
Average:        157.857 [    -0.137286] (      135.714 ‥       182.857)
Std. Dev:       34.1391 [     -3.10808] (      23.4267 ‥       41.9041)

Outliers: 0/0 = 0 (μ=157.720, σ=31.0310)
        Outlier variance:      0.555845 (severe, the data set is probably unusable)

No difference proven at 95.0% confidence
------

ok

This means for the 7 samples of each Ligustrum, the null hypothesis failed to be rejected, so for this data set, there is no significant difference. Either collect more samples, or be satisfied with the result.

In programming, we typically measure the performance of different algorithms and pick "the best". But looks can be deceiving. We could wonder if lists:reverse/1 is faster than tail-recursive reverse variant

tail_reverse(L) -> tail_reverse(L, []).

tail_reverse([], Acc) -> Acc;
tail_reverse([X | Xs], Acc) -> tail_reverse(Xs, [X | Acc]).

which may or may not be true. We can use the eministat:s/3 function to sample The above:

L = lists:seq(1, 100000),
Rev2 = eministat:s("tail_reverse/1", fun() -> tail_reverse(L) end, 50).

This will sample 50 runs of our tail_reverse/1 function. Likewise, we can grab the output of lists:reverse/1:

Rev1 = eministat:s("lists:reverse/1", fun() -> lists:reverse(L) end, 50).

And finally, we can ask eministat if there is any difference between the data sets:

8> Rev1 = eministat_ts:reverse_1().
{dataset,"lists:reverse/1",
         [3078,3085,3095,3096,3110,3126,3142,3239,3272,3513],
         31756.0,101009964.0,10}
9> Rev2 = eministat_ts:reverse_2().
{dataset,"tail_reverse/1",
         [4104,4140,4155,4157,4161,4173,4185,4189,4191,4192,4197,
          4203,4213,4225,4461],
         62946.0,264234764.0,15}
10> eministat:x(95.0, Rev1, Rev2).
x lists:reverse/1
+ tail_reverse/1
+--------------------------------------------------------------------------+
|  xxxx    x x           x                              + +++++           +|
|  xxx                                                    ++++             |
|                                                         + +              |
|                                                           +              |
|                                                           +              |
||___M__A______|                                                           |
|                                                       |___A___|          |
+--------------------------------------------------------------------------+
Dataset: x N=10 CI=95.0000
Statistic     Value     [         Bias] (Bootstrapped LB‥UB)
Min:            3078.00
1st Qu.         3095.00
Median:         3110.00
3rd Qu.         3239.00
Max:            3513.00
Average:        3175.60 [     0.593130] (      3118.60 ‥       3297.30)
Std. Dev:       135.651 [     -14.7128] (      61.9459 ‥       216.422)

Outliers: 0/1 = 1 (μ=3176.19, σ=120.938)
        Outlier variance:    9.14370e-2 (slight)

------

Dataset: + N=15 CI=95.0000
Statistic     Value     [         Bias] (Bootstrapped LB‥UB)
Min:            4104.00
1st Qu.         4157.00
Median:         4189.00
3rd Qu.         4197.00
Max:            4461.00
Average:        4196.40 [   7.09000e-2] (      4170.67 ‥       4260.60)
Std. Dev:       79.3589 [     -9.85382] (      26.3869 ‥       143.088)

Outliers: 0/1 = 1 (μ=4196.47, σ=69.5050)
        Outlier variance:    6.22222e-2 (slight)

Difference at 95.0% confidence
        1020.80 ± 88.7257
        32.1451% ± 2.79398%
        (Student's t, pooled s = 105.042)
------

ok

In this case, we are told there is a significant difference between the two runs of about 1020.80μs, with an uncertainty of about 89μs. Hence we can rely on the call to lists:reverse/1 being faster than a tail recursive variant for lists of size 100000.

Both datasets have 1 outlier, which are values far from the mean. An analysis also shows the analysis unlikely to be affected by outliers, as the variance is only slight.

Usage

To use eministat, your data must be normally distributed, and both datasets must have the same variance. If they are not, then the student's t method doesn't really work as expected, and one must use more powerful tools, such as R, to analyze the data set. You will have to make a reasonable guess that they are, before you can use the mathematics. Once you know that to be the case, you can use eministat to analyze your data sets.

The eministat application supports 3 major functions:

DataSet = eministat_ds:from_list(Name, DataPoints),

will construct a new data set from a list of already measured data points.

The function s/3 can be used to sample

DataSet = eministat:s(Name, Function, N)

will run Function N times and collect the run-time in microseconds for each sample. It will then stuff the resulting data points into a dataset with Name. The s/3 function will first warm up by running the test for 3 seconds before actually starting to measure. This avoids numerous problems with CPU frequency scaling. It also garbage collects before each measurement.

Finally, to analyze two data sets or more, use the x/3 function

eministat:x(ConfidenceLevel, DataSet1, DataSet2), %% or
eministat:x(ConfidenceLevel, BaseSet, [DataSet, …]),

where the ConfidenceLevel is one of [80.0, 90.0, 95.0, 98.0, 99.0, or 99.5]. The output is as above on stdout.

Description of the output

The eministat output contains 4 sections:

HISTOGRAM
For each dataset:
	VITALS
    OUTLIER ANALYSIS
    STUDENT'S T

HISTOGRAM

x lists:reverse/1
+ tail_reverse/1
+--------------------------------------------------------------------------+
|  xxxx    x x           x                              + +++++           +|
|  xxx                                                    ++++             |
|                                                         + +              |
|                                                           +              |
|                                                           +              |
||___M__A______|                                                           |
|                                                       |___A___|          |
+--------------------------------------------------------------------------+

The histogram part shows you an overview of the data distribution in ASCII art. In this case, there are two data sets, + and x and for each value in the data set, they are plotted in ASCII ,so you can see the distribution. If points are overlapping, a * would be printed in the diagram. Below the distribution plot, you have two bars, one for each dataset. The M and A are the median and average/mean respectively. In the case of the 2nd dataset, the median and average are at the same point, so only the A is plotted. The part with |____…____| signifies 1 standard deviation assuming a normally distributed data set.

VITALS

Dataset: x N=10 CI=95.0000
Statistic     Value     [         Bias] (Bootstrapped LB‥UB)
Min:            3078.00
1st Qu.         3095.00
Median:         3110.00
3rd Qu.         3239.00
Max:            3513.00
Average:        3175.60 [     0.593130] (      3118.60 ‥       3297.30)
Std. Dev:       135.651 [     -14.7128] (      61.9459 ‥       216.422)

This part notes the vitals of the dataset in question. N is the number of observations, CI is the set confidence interval. Then follows a standard statistical summary of the data set: Min, Max, Median, Quartiles. The average (mean) of the data set is computed as well as the standard deviation.

In order to be more precise than a single point estimate, we also provide intervals for the average and standard deviation with a lower bound and an upper bound. That is, rather than telling you the mean is 3175 as a point, eministat tells you that the mean obtained from this particular sample is the interval 3118‥3297.

It is important to stress that the procedure for computing the interval uses a 95% confidence (it is configurable). This does not mean that there is a 95% chance the interval contains the true population mean. The true mean is an unknown and no procedure can divine what it is. Rather the 95% refers to the configuration of the interval estimation procedure: if you were to repeat this experiment thousands of times, and you would compute a (different) confidence interval for each of those thouand samples, then it would tend to be the case that 95% of those intervals would contain the true population mean.

The system uses a bias-corrected accelerated bootstrap method to compute the bounds on the interval. It also computes the bias from the bootstrap to the sample parameter. In the above example, you see the bias of -14 in the std. deviation which means that the bootstrap procedure usually obtains a smaller standard deviation than the sample's estimate.

OUTLIERS

Outliers: 0/1 = 1 (μ=3176.19, σ=120.938)
        Outlier variance:    9.14370e-2 (slight)

We use a simple criterion for outliers. Define IQR = Q3 - Q1 to be the interquartile range. Then any point which is further away from the mean than 1.5IQR is deemed an outlier. We report those as Lower/Upper where lower outliers are below the mean and upper outliers are above the mean.

We also compute outlier variance, which is a measurement of how likely it is the case the outliers are affecting the result of the computation. The range is unaffected‥slight‥moderate‥severe. In the case of severe variance, it is worth looking at if you can improve the sampling to avoid it.

Common problems are garbage collection, CPU frequency scaling, other work being done on the benchmarking machine as a background task, or other kinds of interference.

STUDENT's T

Difference at 95.0% confidence
        1020.80 ± 88.7257
        32.1451% ± 2.79398%
        (Student's t, pooled s = 105.042)

This section only makes sense given the following rules:

  • The datasets are normally distributed, or tend to be
  • The datasets have equal variance

Assuming we have 2 or more datasets, we are running a 2-sample Student's T-test pairing the first set against each of the other sets. If the two datasets are far apart, then we have significance that the two data sets are really different. But in the case where the two data sets overlap a lot, then it is not a priori given the two datasets differ, as we saw in the example of the ligustrum experiment above.

We report a series of numbers: the difference in the means ± the interval for the Student's T-test.

In general, you have to pass this test for your measurements to have any meaning when comparing two benchmarks. Otherwise, the overlap in runtime is such that there is little reason to believe one way of solving the problem is faster than the other.