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Evaluating Evaluation Measures 
with
Worst‐Case Confidence Interval 
Widths
Tetsuya Sakai
tetsuyasakai@acm.org
Waseda University, Japan
December 5, 2017@EVIA 2017, NII
Which evaluation measures should we use? 
An example of existing work:
This paper says that we don’t need
to report P@10 if we report AP
TALK OUTLINE
1. Popular methods for evaluating evaluation 
measures
2. Topic set size design
3. Evaluating evaluation measures with WCW
4. EVIA reviewers’ comments
5. Conclusions and future work
Rank correlation
Does not tell us which measure is better.
Merely tells us whether one measure is similar to 
another.
System A
System B
System C
System A
System C
System B
Ranking by Measure M1 Ranking by Measure M2
Kendall’s τ
τ AP
Spearman’s ρ
Preference agreement [Sanderson+10]
SERP1 SERP2
query search
SERP1 > SERP2
Measure A
Measure B
SERP1 > SERP2
SERP1 < SERP2 Disagreement
Agreement
This is great but:
‐ assessor 
≠ searcher
‐ many assessors 
required to 
ensure reliability
‐ many assessors 
= high cost
Swap method [Voorhees+02]
Topic set
Split half 1 Split half 2
Do a random split
B times
System1 System2
System1 System3
System2 System3
<
<
>
System1 System2
System1 System3
System2 System3
<
<
<Swap!
Stable measures give us consistent results regardless of the topic set  
Given 50 topics, we can only discuss the case with 25 topics directly
unless bootstrap topic sets are used [Sakai06]
For a given measure M…
Discriminative power [Sakai06,07]
Topic set
System1 System2
System1 System3
System2 System3
(Randomised)
Tukey HSD
test etc.
Measure 1 Measure 2
1<2
(p=0.003)
1<3
(p=0.035)
2>3
(p=0.071)
Stable measures give us more confidence given a topic set size
1<2
(p=0.201)
1<3
(p=0.523)
2>3
(p=0.721)
With Measure 1, we conclude 1<2, 1<3. With Measure 2, there is no conclusion.
Measure 1 is more discriminative. 
TALK OUTLINE
1. Popular methods for evaluating evaluation 
measures
2. Topic set size design
3. Evaluating evaluation measures with WCW
4. EVIA reviewers’ comments
5. Conclusions and future work
Topic set size design [Sakai16]
• Applies sample size design from statistics [Nagata03]
• Based on statistical requirements and a variance 
estimate of a particular evaluation measure, obtain the 
right topic set size
• Sakai’s three tools
‐ t‐test‐based tool
http://www.f.waseda.jp/tetsuya/BOOK/samplesizeTTEST2.xlsx
‐ one‐way ANOVA‐based tool
http://www.f.waseda.jp/tetsuya/BOOK/samplesizeANOVA2.xlsx
‐ confidence interval‐based tool
http://www.f.waseda.jp/tetsuya/BOOK/samplesizeCI2.xlsx
samplesizeANOVA2.xlsx 
(one‐way ANOVA statistical power)
INPUT:
α (Type I error probability), β (Type II error probability) 
[Select a sheet for (α, β)]
m (#systems to compare)
(estimated common variance)
minD (minimum detectable range)
OUTPUT:
n (topic set size required)
When the true diff between 
best and worst systems is minD
or larger, ensure 100(1‐β)% 
statistical power
Detecting a 
nonexistent diff
Missing a true 
diff
samplesizeCI2.xlsx
INPUT: 
α (for 100(1‐α)% confidence interval)
δ (Worst‐case Confidence interval Width)
(estimated variance for the difference between
two systems)
OUTPUT:
n (topic set 
size required)
The CI for the diff 
between ANY system 
pair should be no 
larger than WCW (=δ)
How to estimate the common 
variance
Given a topic‐by‐run score matrix for a particular 
evaluation measure, obtain the residual variance VE
of ANOVA. This is an unbiased estimate of          .
In this study, we let                      .
(If two sets of scores have the same variance, the 
variance of the score differences are double that in 
the worst case.)
For the ANOVA‐
based tool
For the CI‐based 
tool
TALK OUTLINE
1. Popular methods for evaluating evaluation 
measures
2. Topic set size design
3. Evaluating evaluation measures with WCW
4. EVIA reviewers’ comments
5. Conclusions and future work
Proposal: use WCW curves to compare 
evaluation measure stability (1) 
• Using samplesizeCI2 with estimated variances for 
the measures, we should be able to draw curves 
like these:
WCW
Topic
set size
Comparison of measures in terms of 
WCW is valid since we want CIs to be 
as tight as possible for any measure
Proposal: use WCW curves to compare 
evaluation measure stability (2) 
• Using samplesizeCI2 with estimated variances for 
the measures, we should be able to draw curves 
like these:
WCW
Topic
set size
Unlike discriminative power and the 
swap method, we can easily consider 
a wide range of topic set sizes
Proposal: use WCW curves to compare 
evaluation measure stability (2) 
• Using samplesizeCI2 with estimated variances for 
the measures, we should be able to draw curves 
like these:
WCW
Topic
set size
For a given topic set size, we can 
discuss the diffs across measures that 
practically matter:
n=50 ⇒ WCW≒0.15 for Q and nDCG
and WCW>0.20 for AP and nERR
Another example (more in paper)
According to this data set,
D‐nDCG and D#‐nDCG achieve 
smaller WCWs than α‐nDCG and 
nERR‐IA
1. Compute a variance estimate        from a topic‐by‐
run matrix of the measure in question.    
2. Instead of entering
(α=0.05, δ=WCW,                       ) to samplesizeCI2,
enter
(α=0.05, β=0.20, m=10,         , minD=WCW) to 
samplesizeANOVA2 to obtain the topic set size. 
3. Try different WCW’s and record the n’s to draw the 
curve. 
How to draw a WCW curve in practice 
samplesizeCI2 cannot handle large topic set sizes due to a limitation in Excel.
Why samplesizeANOVA2 can be used instead can be explained analytically (see paper).
TALK OUTLINE
1. Popular methods for evaluating evaluation 
measures
2. Topic set size design
3. Evaluating evaluation measures with WCW
4. EVIA reviewers’ comments
5. Conclusions and future work
Reviewer 1
"The paper is clearly relevant to EVIA and I am 
confident that the audience will ask questions to 
help them grasp what the paper is contributing, but 
it was hard going.“
⇒ Apologies… This is a sequel to my IRJ paper, but 
making it stand‐alone while avoiding self‐plagiarism 
was very tough. I will try to do a better job in the 
book I’m writing: 
Laboratory Experiments in Information Retrieval:
Sample Sizes, Effect Sizes, and Statistical Power (Springer)
Reviewer 3
"So, somehow, I got to the end of reading the paper 
and didn't feel that I'd picked up even the basis of 
what it was claiming. And I didn't get told what a 
WCW was, sorry.“
⇒ Apologies again. See my responses to Reviewer 1. 
But please note: even the abstract (of the submitted 
version) says: “WCW is the worst‐case width of a 
confidence interval (CI) for the difference between 
any two systems, given a topic set size.”
Reviewer 2
“I found the paper certainly interesting, a great 
match to Evia, I have strong doubts about whether 
this is a good way to evaluate evaluation measures, 
and what purpose does it serve to have a powerful 
enough measure.”
⇒ My view is that statistical stability of a measure is 
a useful property. We can use smaller topic sets. 
That’s more economical. Note that I never claimed 
that high stability (power) is a sufficient condition for 
a good evaluation measure.
TALK OUTLINE
1. Popular methods for evaluating evaluation 
measures
2. Topic set size design
3. Evaluating evaluation measures with WCW
4. EVIA reviewers’ comments
5. Conclusions and future work
Conclusions and future work
Advantages of using WCW‐curves for comparing 
evaluation measures:
‐ Comparison in terms of WCW is valid because we want 
a tight CI with any measure;
‐ Unlike discriminative power and the swap method, it 
provides a reliable view across different topic set sizes;
‐ For a given topic set size, we can discuss the differences 
in WCW that practically matter.
FUTURE WORK: Apply WCW to a wide range of tasks and 
measures, and compare with discriminative power etc.
References
[Nagata03] How to Design the Sample Size (in Japanese), 
Asakura Shoten, 2003.
[Sakai06] Evaluating Evaluation Metrics based on the 
Bootstrap, ACM SIGIR 2006.
[Sakai07] Alternatives to Bpref, ACM SIGIR 2007.
[Sakai16] Topic Set Size Design, Information Retrieval 
Journal 19(3), 2016. 
http://link.springer.com/content/pdf/10.1007%2Fs10791‐015‐9273‐z.pdf
(open access)
[Sanderson+10] Do User Preferences and Evaluation 
Measures Line Up? ACM SIGIR 2010.
[Voorhees+02] The Effect of Topic Set Size on Retrieval 
Experiment Error, ACM SIGIR 2002.

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