2 |
|
\label{sec:datadriven} |
3 |
|
We have developed two data-driven methods to |
4 |
|
estimate the background in the signal region. |
5 |
< |
The first one explouts the fact that |
5 |
> |
The first one exploits the fact that |
6 |
|
\met and \met$/\sqrt{\rm SumJetPt}$ are nearly |
7 |
|
uncorrelated for the $t\bar{t}$ background |
8 |
|
(Section~\ref{sec:abcd}); the second one |
12 |
|
from $W$-decays, which is reconstructed as \met in the |
13 |
|
detector. |
14 |
|
|
15 |
< |
In 30 pb$^{-1}$ we expect $\approx$ 1 SM event in |
16 |
< |
the signal region. The expectations from the LMO |
17 |
< |
and LM1 SUSY benchmark points are 5.6 and |
18 |
< |
2.2 events respectively. |
15 |
> |
|
16 |
|
%{\color{red} I took these |
17 |
|
%numbers from the twiki, rescaling from 11.06 to 30/pb. |
18 |
|
%They seem too large...are they really right?} |
22 |
|
\label{sec:abcd} |
23 |
|
|
24 |
|
We find that in $t\bar{t}$ events \met and |
25 |
< |
\met$/\sqrt{\rm SumJetPt}$ are nearly uncorrelated. |
26 |
< |
This is demonstrated in Figure~\ref{fig:uncor}. |
25 |
> |
\met$/\sqrt{\rm SumJetPt}$ are nearly uncorrelated, |
26 |
> |
as demonstrated in Figure~\ref{fig:uncor}. |
27 |
|
Thus, we can use an ABCD method in the \met$/\sqrt{\rm SumJetPt}$ vs |
28 |
|
sumJetPt plane to estimate the background in a data driven way. |
29 |
|
|
50 |
|
The signal region is region D. The expected number of events |
51 |
|
in the four regions for the SM Monte Carlo, as well as the BG |
52 |
|
prediction AC/B are given in Table~\ref{tab:abcdMC} for an integrated |
53 |
< |
luminosity of 30 pb$^{-1}$. The ABCD method is accurate |
54 |
< |
to about 10\%. {\color{red} Avi wants some statement about stability |
55 |
< |
wrt changes in regions. I am not sure that we have done it and |
56 |
< |
I am not sure it is necessary (Claudio).} |
53 |
> |
luminosity of 35 pb$^{-1}$. The ABCD method is accurate |
54 |
> |
to about 20\%. |
55 |
> |
%{\color{red} Avi wants some statement about stability |
56 |
> |
%wrt changes in regions. I am not sure that we have done it and |
57 |
> |
%I am not sure it is necessary (Claudio).} |
58 |
|
|
59 |
|
\begin{table}[htb] |
60 |
|
\begin{center} |
61 |
|
\caption{\label{tab:abcdMC} Expected SM Monte Carlo yields for |
62 |
< |
30 pb$^{-1}$ in the ABCD regions.} |
63 |
< |
\begin{tabular}{|l|c|c|c|c||c|} |
62 |
> |
35 pb$^{-1}$ in the ABCD regions, as well as the predicted yield in |
63 |
> |
the signal region given by A $\times$ C / B. Here `SM other' is the sum |
64 |
> |
of non-dileptonic $t\bar{t}$ decays, $W^{\pm}$+jets, $W^+W^-$, |
65 |
> |
$W^{\pm}Z^0$, $Z^0Z^0$ and single top.} |
66 |
> |
\begin{tabular}{lccccc} |
67 |
> |
\hline |
68 |
> |
sample & A & B & C & D & A $\times$ C / B \\ |
69 |
> |
\hline |
70 |
> |
|
71 |
> |
|
72 |
> |
\hline |
73 |
> |
$t\bar{t}\rightarrow \ell^{+}\ell^{-}$ & 7.96 & 33.07 & 4.81 & 1.20 & 1.16 \\ |
74 |
> |
$Z^0 \rightarrow \ell^{+}\ell^{-}$ & 0.03 & 1.47 & 0.10 & 0.10 & 0.00 \\ |
75 |
> |
SM other & 0.65 & 2.31 & 0.17 & 0.14 & 0.05 \\ |
76 |
> |
\hline |
77 |
> |
total SM MC & 8.63 & 36.85 & 5.07 & 1.43 & 1.19 \\ |
78 |
|
\hline |
67 |
– |
Sample & A & B & C & D & AC/D \\ \hline |
68 |
– |
ttdil & 6.9 & 28.6 & 4.2 & 1.0 & 1.0 \\ |
69 |
– |
Zjets & 0.0 & 1.3 & 0.1 & 0.1 & 0.0 \\ |
70 |
– |
Other SM & 0.5 & 2.0 & 0.1 & 0.1 & 0.0 \\ \hline |
71 |
– |
total MC & 7.4 & 31.9 & 4.4 & 1.2 & 1.0 \\ \hline |
79 |
|
\end{tabular} |
80 |
|
\end{center} |
81 |
|
\end{table} |
96 |
|
to account for the fact that any dilepton selection must include a |
97 |
|
moderate \met cut in order to reduce Drell Yan backgrounds. This |
98 |
|
is discussed in Section 5.3 of Reference~\cite{ref:ourvictory}; for a \met |
99 |
< |
cut of 50 GeV, the rescaling factor is obtained from the data as |
99 |
> |
cut of 50 GeV, the rescaling factor is obtained from the MC as |
100 |
|
|
101 |
|
\newcommand{\ptll} {\ensuremath{P_T(\ell\ell)}} |
102 |
|
\begin{center} |
105 |
|
|
106 |
|
|
107 |
|
Monte Carlo studies give values of $K$ that are typically between 1.5 and 1.6, |
108 |
< |
depending on selection details. |
108 |
> |
depending on selection details. |
109 |
> |
%%%TO BE REPLACED |
110 |
> |
%Given the integrated luminosity of the |
111 |
> |
%present dataset, the determination of $K$ in data is severely statistics |
112 |
> |
%limited. Thus, we take $K$ from $t\bar{t}$ Monte Carlo as |
113 |
> |
|
114 |
> |
%\begin{center} |
115 |
> |
%$ K_{MC} = \frac{\int_0^{\infty} {\cal N}(\met)~~d\met~}{\int_{50}^{\infty} {\cal N}(\met)~~d\met~}$ |
116 |
> |
%\end{center} |
117 |
> |
|
118 |
> |
%\noindent {\color{red} For the 11 pb result we have used $K$ from data.} |
119 |
|
|
120 |
|
There are several effects that spoil the correspondance between \met and |
121 |
|
$P_T(\ell\ell)$: |
128 |
|
\item Similarly, the \met$>$50 GeV cut introduces an asymmetry between leptons and |
129 |
|
neutrinos which is only partially compensated by the $K$ factor above. |
130 |
|
\item The \met resolution is much worse than the dilepton $P_T$ resolution. |
131 |
< |
When convoluted with a falling spectrum in the tails of \met, this result |
131 |
> |
When convoluted with a falling spectrum in the tails of \met, this results |
132 |
|
in a harder spectrum for \met than the original $P_T(\nu\nu)$. |
133 |
|
\item The \met response in CMS is not exactly 1. This causes a distortion |
134 |
|
in the \met distribution that is not present in the $P_T(\ell\ell)$ distribution. |
139 |
|
sources. These events can affect the background prediction. Particularly |
140 |
|
dangerous are high $P_T$ Drell Yan events that barely pass the \met$>$ 50 |
141 |
|
GeV selection. They will tend to push the data-driven background prediction up. |
142 |
+ |
Therefore we estimate the number of DY events entering the background prediction |
143 |
+ |
using the $R_{out/in}$ method as described in Sec.~\ref{sec:othBG}. |
144 |
|
\end{itemize} |
145 |
|
|
146 |
|
We have studied these effects in SM Monte Carlo, using a mixture of generator and |
163 |
|
4&Y & N & N & GEN & Y & Y & Y & 1.55 \\ |
164 |
|
5&Y & N & N & RECOSIM & Y & Y & Y & 1.51 \\ |
165 |
|
6&Y & Y & N & RECOSIM & Y & Y & Y & 1.58 \\ |
166 |
< |
7&Y & Y & Y & RECOSIM & Y & Y & Y & 1.18 \\ |
166 |
> |
7&Y & Y & Y & RECOSIM & Y & Y & Y & 1.38 \\ |
167 |
> |
%%%NOTE: updated value 1.18 -> 1.46 since 2/3 DY events have been removed by updated analysis selections, |
168 |
> |
%%%dpt/pt cut and general lepton veto |
169 |
|
\hline |
170 |
|
\end{tabular} |
171 |
|
\end{center} |
183 |
|
% by $\approx 4\%$\footnote{We find that observed/predicted changes by roughly 0.1 |
184 |
|
%for each 1.5\% change in \met response.}. |
185 |
|
Finally, contamination from non $t\bar{t}$ |
186 |
< |
events can have a significant impact on the BG prediction. The changes between |
187 |
< |
lines 6 and 7 of Table~\ref{tab:victorybad} is driven by 3 |
188 |
< |
Drell Yan events that pass the \met selection in Monte Carlo (thus the effect |
189 |
< |
is statistically not well quantified). |
186 |
> |
events can have a significant impact on the BG prediction. |
187 |
> |
%The changes between |
188 |
> |
%lines 6 and 7 of Table~\ref{tab:victorybad} is driven by 3 |
189 |
> |
%Drell Yan events that pass the \met selection in Monte Carlo (thus the effect |
190 |
> |
%is statistically not well quantified). |
191 |
|
|
192 |
|
An additional source of concern is that the CMS Madgraph $t\bar{t}$ MC does |
193 |
|
not include effects of spin correlations between the two top quarks. |
194 |
|
We have studied this effect at the generator level using Alpgen. We find |
195 |
|
that the bias is at the few percent level. |
196 |
|
|
197 |
+ |
%%%TO BE REPLACED |
198 |
+ |
%Based on the results of Table~\ref{tab:victorybad}, we conclude that the |
199 |
+ |
%naive data driven background estimate based on $P_T{(\ell\ell)}$ needs to |
200 |
+ |
%be corrected by a factor of {\color{red} $ K_{\rm{fudge}} =1.2 \pm 0.3$ |
201 |
+ |
%(We still need to settle on thie exact value of this. |
202 |
+ |
%For the 11 pb analysis it is taken as =1.)} . The quoted |
203 |
+ |
%uncertainty is based on the stability of the Monte Carlo tests under |
204 |
+ |
%variations of event selections, choices of \met algorithm, etc. |
205 |
+ |
%For example, we find that observed/predicted changes by roughly 0.1 |
206 |
+ |
%for each 1.5\% change in the average \met response. |
207 |
+ |
|
208 |
|
Based on the results of Table~\ref{tab:victorybad}, we conclude that the |
209 |
|
naive data driven background estimate based on $P_T{(\ell\ell)}$ needs to |
210 |
< |
be corrected by a factor of {\color{red} $1.2 \pm 0.3$ (We need to talk |
211 |
< |
about this)} . The quoted |
212 |
< |
uncertainty is based on the stability of the Monte Carlo tests under |
210 |
> |
be corrected by a factor of $ K_C = X \pm Y$. |
211 |
> |
The value of this correction factor as well as the systematic uncertainty |
212 |
> |
will be assessed using 38X ttbar madgraph MC. In the following we use |
213 |
> |
$K_C = 1$ for simplicity. Based on previous MC studies we foresee a correction |
214 |
> |
factor of $K_C \approx 1.2 - 1.5$, and we will assess an uncertainty |
215 |
> |
based on the stability of the Monte Carlo tests under |
216 |
|
variations of event selections, choices of \met algorithm, etc. |
217 |
< |
For example, We find that observed/predicted changes by roughly 0.1 |
218 |
< |
for each 1.5\% change in the average \met response. |
217 |
> |
For example, we find that observed/predicted changes by roughly 0.1 |
218 |
> |
for each 1.5\% change in the average \met response. |
219 |
|
|
220 |
|
|
221 |
|
|
241 |
|
|
242 |
|
The LM points are benchmarks for SUSY analyses at CMS. The effects |
243 |
|
of signal contaminations for a couple such points are summarized |
244 |
< |
in Table~\ref{tab:sigcontABCD} and~\ref{tab:sigcontPT}. |
209 |
< |
Signal contamination is definitely an important |
244 |
> |
in Table~\ref{tab:sigcont}. Signal contamination is definitely an important |
245 |
|
effect for these two LM points, but it does not totally hide the |
246 |
|
presence of the signal. |
247 |
|
|
248 |
|
|
249 |
|
\begin{table}[htb] |
250 |
|
\begin{center} |
251 |
< |
\caption{\label{tab:sigcontABCD} Effects of signal contamination |
252 |
< |
for the background predictions of the ABCD method including LM0 or |
253 |
< |
LM1. Results |
254 |
< |
are normalized to 30 pb$^{-1}$.} |
255 |
< |
\begin{tabular}{|c||c|c||c|c|} |
221 |
< |
\hline |
222 |
< |
SM & SM$+$LM0 & BG Prediction & Sm$+$LM1 & BG Prediction \\ |
223 |
< |
Background & Contribution& Including LM0 & Contribution & Including LM1 \\ \hline |
224 |
< |
1.2 & 6.8 & 3.7 & 3.4 & 1.3 \\ |
251 |
> |
\caption{\label{tab:sigcont} Effects of signal contamination |
252 |
> |
for the two data-driven background estimates. The three columns give |
253 |
> |
the expected yield in the signal region and the background estimates |
254 |
> |
using the ABCD and $P_T(\ell \ell)$ methods. Results are normalized to 35~pb$^{-1}$.} |
255 |
> |
\begin{tabular}{lccc} |
256 |
|
\hline |
257 |
< |
\end{tabular} |
258 |
< |
\end{center} |
259 |
< |
\end{table} |
260 |
< |
|
261 |
< |
\begin{table}[htb] |
231 |
< |
\begin{center} |
232 |
< |
\caption{\label{tab:sigcontPT} Effects of signal contamination |
233 |
< |
for the background predictions of the $P_T(\ell\ell)$ method including LM0 or |
234 |
< |
LM1. Results |
235 |
< |
are normalized to 30 pb$^{-1}$. {\color{red} Does this BG prediction include |
236 |
< |
the fudge factor of 1.4 or watever because the method is not perfect.}} |
237 |
< |
\begin{tabular}{|c||c|c||c|c|} |
238 |
< |
\hline |
239 |
< |
SM & SM$+$LM0 & BG Prediction & Sm$+$LM1 & BG Prediction \\ |
240 |
< |
Background & Contribution& Including LM0 & Contribution & Including LM1 \\ \hline |
241 |
< |
1.2 & 6.8 & 2.2 & 3.4 & 1.5 \\ |
257 |
> |
& Yield & ABCD & $P_T(\ell \ell)$ \\ |
258 |
> |
\hline |
259 |
> |
SM only & 1.43 & 1.19 & 1.03 \\ |
260 |
> |
SM + LM0 & 7.90 & 4.23 & 2.35 \\ |
261 |
> |
SM + LM1 & 4.00 & 1.53 & 1.51 \\ |
262 |
|
\hline |
263 |
|
\end{tabular} |
264 |
|
\end{center} |
265 |
|
\end{table} |
266 |
|
|
267 |
+ |
|
268 |
+ |
|
269 |
+ |
%\begin{table}[htb] |
270 |
+ |
%\begin{center} |
271 |
+ |
%\caption{\label{tab:sigcontABCD} Effects of signal contamination |
272 |
+ |
%for the background predictions of the ABCD method including LM0 or |
273 |
+ |
%LM1. Results |
274 |
+ |
%are normalized to 30 pb$^{-1}$.} |
275 |
+ |
%\begin{tabular}{|c|c||c|c||c|c|} |
276 |
+ |
%\hline |
277 |
+ |
%SM & BG Prediction & SM$+$LM0 & BG Prediction & SM$+$LM1 & BG Prediction \\ |
278 |
+ |
%Background & SM Only & Contribution & Including LM0 & Contribution & Including LM1 \\ \hline |
279 |
+ |
%1.2 & 1.0 & 6.8 & 3.7 & 3.4 & 1.3 \\ |
280 |
+ |
%\hline |
281 |
+ |
%\end{tabular} |
282 |
+ |
%\end{center} |
283 |
+ |
%\end{table} |
284 |
+ |
|
285 |
+ |
%\begin{table}[htb] |
286 |
+ |
%\begin{center} |
287 |
+ |
%\caption{\label{tab:sigcontPT} Effects of signal contamination |
288 |
+ |
%for the background predictions of the $P_T(\ell\ell)$ method including LM0 or |
289 |
+ |
%LM1. Results |
290 |
+ |
%are normalized to 30 pb$^{-1}$.} |
291 |
+ |
%\begin{tabular}{|c|c||c|c||c|c|} |
292 |
+ |
%\hline |
293 |
+ |
%SM & BG Prediction & SM$+$LM0 & BG Prediction & SM$+$LM1 & BG Prediction \\ |
294 |
+ |
%Background & SM Only & Contribution & Including LM0 & Contribution & Including LM1 \\ \hline |
295 |
+ |
%1.2 & 1.0 & 6.8 & 2.2 & 3.4 & 1.5 \\ |
296 |
+ |
%\hline |
297 |
+ |
%\end{tabular} |
298 |
+ |
%\end{center} |
299 |
+ |
%\end{table} |
300 |
+ |
|