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1 \section{Data Driven Background Estimation Methods}
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
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
9 is based on the fact that in $t\bar{t}$ the
10 $P_T$ of the dilepton pair is on average
11 nearly the same as the $P_T$ of the pair of neutrinos
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 {\color{red} XX} and
18 {\color{red} XX} events respectively.
19
20
21 \subsection{ABCD method}
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}.
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
30 \begin{figure}[tb]
31 \begin{center}
32 \includegraphics[width=0.75\linewidth]{uncorrelated.pdf}
33 \caption{\label{fig:uncor}\protect Distributions of SumJetPt
34 in MC $t\bar{t}$ events for different intervals of
35 MET$/\sqrt{\rm SumJetPt}$.}
36 \end{center}
37 \end{figure}
38
39 \begin{figure}[bt]
40 \begin{center}
41 \includegraphics[width=0.75\linewidth]{abcdMC.jpg}
42 \caption{\label{fig:abcdMC}\protect Distributions of SumJetPt
43 vs. MET$/\sqrt{\rm SumJetPt}$ for SM Monte Carlo. Here we also
44 show our choice of ABCD regions. {\color{red} We need a better
45 picture with the letters A-B-C-D and with the numerical values
46 of the boundaries clearly indicated.}}
47 \end{center}
48 \end{figure}
49
50
51 Our choice of ABCD regions is shown in Figure~\ref{fig:abcdMC}.
52 The signal region is region D. The expected number of events
53 in the four regions for the SM Monte Carlo, as well as the BG
54 prediction AC/B are given in Table~\ref{tab:abcdMC} for an integrated
55 luminosity of 30 pb$^{-1}$. The ABCD method is accurate
56 to about 10\%.
57
58 \begin{table}[htb]
59 \begin{center}
60 \caption{\label{tab:abcdMC} Expected SM Monte Carlo yields for
61 30 pb$^{-1}$ in the ABCD regions.}
62 \begin{tabular}{|l|c|c|c|c||c|}
63 \hline
64 Sample & A & B & C & D & AC/D \\ \hline
65 ttdil & 6.4 & 28.4 & 4.2 & 1.0 & 0.9 \\
66 Zjets & 0.0 & 1.3 & 0.2 & 0.0 & 0.0 \\
67 Other SM & 0.6 & 2.1 & 0.2 & 0.1 & 0.0 \\ \hline
68 total MC & 7.0 & 31.8 & 4.5 & 1.1 & 1.0 \\ \hline
69 \end{tabular}
70 \end{center}
71 \end{table}
72
73 \subsection{Dilepton $P_T$ method}
74 \label{sec:victory}
75 This method is based on a suggestion by V. Pavlunin\cite{ref:victory},
76 and was investigated by our group in 2009\cite{ref:ourvictory}.
77 The idea is that in dilepton $t\bar{t}$ events the lepton and neutrinos
78 from $W$ decays have the same $P_T$ spectrum (modulo $W$ polarization
79 effects). One can then use the observed
80 $P_T(\ell\ell)$ distribution to model the sum of neutrino $P_T$'s which
81 is identified with the \met.
82
83 Then, in order to predict the $t\bar{t} \to$ dilepton contribution to a
84 selection with \met$+$X, one applies a cut on $P_T(\ell\ell)+$X instead.
85 In practice one has to rescale the result of the $P_T(\ell\ell)+$X selection
86 to account for the fact that any dilepton selection must include a
87 moderate \met cut in order to reduce Drell Yan backgrounds. This
88 is discussed in Section 5.3 of Reference~\cite{ref:ourvictory}; for a \met
89 cut of 50 GeV, the rescaling factor is obtained from the data as
90
91 \newcommand{\ptll} {\ensuremath{P_T(\ell\ell)}}
92 \begin{center}
93 $ K = \frac{\int_0^{\infty} {\cal N}(\ptll)~~d\ptll~}{\int_{50}^{\infty} {\cal N}(\ptll)~~d\ptll~}$
94 \end{center}
95
96
97 Monte Carlo studies give values of $K$ that are typically between 1.5 and 1.6,
98 depending on selection details.
99
100 There are several effects that spoil the correspondance between \met and
101 $P_T(\ell\ell)$:
102 \begin{itemize}
103 \item $Ws$ in top events are polarized. Neutrinos are emitted preferentially
104 forward in the $W$ rest frame, thus the $P_T(\nu\nu)$ distribution is harder
105 than the $P_T(\ell\ell)$ distribution for top dilepton events.
106 \item The lepton selections results in $P_T$ and $\eta$ cuts on the individual
107 leptons that have no simple correspondance to the neutrino requirements.
108 \item Similarly, the \met$>$50 GeV cut introduces an asymmetry between leptons and
109 neutrinos which is only partially compensated by the $K$ factor above.
110 \item The \met resolution is much worse than the dilepton $P_T$ resolution.
111 When convoluted with a falling spectrum in the tails of \met, this result
112 in a harder spectrum for \met than the original $P_T(\nu\nu)$.
113 \item The \met response in CMS is not exactly 1. This causes a distortion
114 in the \met distribution that is not present in the $P_T(\ell\ell)$ distribution.
115 \item The $t\bar{t} \to$ dilepton signal includes contributions from
116 $W \to \tau \to \ell$. For these events the arguments about the equivalence
117 of $P_T(\ell\ell)$ and $P_T(\nu\nu)$ do not apply.
118 \item A dilepton selection will include SM events from non $t\bar{t}$
119 sources. These events can affect the background prediction. Particularly
120 dangerous are high $P_T$ Drell Yan events that barely pass the \met$>$ 50
121 GeV selection. They will tend to push the data-driven background prediction up.
122 \end{itemize}
123
124 We have studied these effects in SM Monte Carlo, using a mixture of generator and
125 reconstruction level studies, putting the various effects in one at a time.
126 For each configuration, we apply the data-driven method and report as figure
127 of merit the ratio of observed and predicted events in the signal region.
128 The results are summarized in Table~\ref{tab:victorybad}.
129
130 \begin{table}[htb]
131 \begin{center}
132 \caption{\label{tab:victorybad} Test of the data driven method in Monte Carlo
133 under different assumptions. See text for details.}
134 \begin{tabular}{|l|c|c|c|c|c|c|c|}
135 \hline
136 & True $t\bar{t}$ dilepton & $t\to W\to\tau$& other SM & GEN or & Lepton $P_T$ & \met $>$ 50& obs/pred \\
137 & included & included & included & RECOSIM & and $\eta$ cuts & & \\ \hline
138 1&Y & N & N & GEN & N & N & \\
139 2&Y & N & N & GEN & Y & N & \\
140 3&Y & N & N & GEN & Y & Y & \\
141 4&Y & N & N & RECOSIM & Y & Y & \\
142 5&Y & Y & N & RECOSIM & Y & Y & \\
143 6&Y & Y & Y & RECOSIM & Y & Y & \\
144 \hline
145 \end{tabular}
146 \end{center}
147 \end{table}
148
149
150 The largest discrepancy between prediction and observation occurs on the first
151 line of Table~\ref{tab:victorybad}, {\em i.e.}, at the generator level with no
152 cuts. We have verified that this effect is due to the polarization of
153 the $W$ (we remove the polarization by reweighting the events and we get
154 good agreement between prediction and observation). The kinematical
155 requirements (lines 2 and 3) do not have a significant additional effect.
156 Going from GEN to RECOSIM there is a significant change in observed/predicted.
157 We have tracked this down to the fact that tcMET underestimates the true \met
158 by $\approx 4\%$\footnote{We find that observed/predicted changes by roughly 0.1
159 for each 1.5\% change in \met response.}. Finally, contamination from non $t\bar{t}$
160 events can have a significant impact on the BG prediction. The changes between
161 lines 5 and 6 of Table~\ref{tab:victorybad} is driven by only {\color{red} 3}
162 Drell Yan events that pass the \met selection.
163
164 An additional source of concern is that the CMS Madgraph $t\bar{t}$ MC does
165 not include effects of spin correlations between the two top quarks.
166 We have studied this effect at the generator level using Alpgen. We find
167 that the bias is a the few percent level.
168
169 Based on the results of Table~\ref{tab:victorybad}, we conclude that the
170 naive data driven background estimate based on $P_T{\ell\ell)}$ needs to
171 be corrected by a factor of {\color{red} $1.4 \pm 0.3$ (We need to
172 decide what this number should be)}. The quoted
173 uncertainty is based on the stability of the Monte Carlo tests under
174 variations of event selections, choices of \met algorithm, etc.
175
176
177 \subsection{Signal Contamination}
178 \label{sec:sigcont}
179
180 All data-driven methods are principle subject to signal contaminations
181 in the control regions, and the methods described in
182 Sections~\ref{sec:abcd} and~\ref{sec:victory} are not exceptions.
183 Signal contamination tends to dilute the significance of a signal
184 present in the data by inflating the background prediction.
185
186 It is hard to quantify how important these effects are because we
187 do not know what signal may be hiding in the data. Having two
188 independent methods (in addition to Monte Carlo ``dead-reckoning'')
189 adds redundancy because signal contamination can have different effects
190 in the different control regions for the two methods.
191 For example, in the extreme case of a
192 new physics signal
193 with $P_T(\ell \ell) = \met$, an excess of ev ents would be seen
194 in the ABCD method but not in the $P_T(\ell \ell)$ method.
195
196 The LM points are benchmarks for SUSY analyses at CMS. The effects
197 of signal contaminations for a couple such points are summarized
198 in Table~\ref{tab:sigcontABCD} and~\ref{tab:sigcontPT}.
199 Signal contamination is definitely an important
200 effect for these two LM points, but it does not totally hide the
201 presence of the signal.
202
203
204 \begin{table}[htb]
205 \begin{center}
206 \caption{\label{tab:sigcontABCD} Effects of signal contamination
207 for the background predictions of the ABCD method including LM0 or
208 LM1. Results
209 are normalized to 30 pb$^{-1}$.}
210 \begin{tabular}{|c||c|c||c|c|}
211 \hline
212 SM & LM0 & BG Prediction & LM1 & BG Prediction \\
213 Background & Contribution& Including LM0 & Contribution & Including LM1 \\ \hline
214 x & x & x & x & x \\
215 \hline
216 \end{tabular}
217 \end{center}
218 \end{table}
219
220 \begin{table}[htb]
221 \begin{center}
222 \caption{\label{tab:sigcontPT} Effects of signal contamination
223 for the background predictions of the $P_T(\ell\ell)$ method including LM0 or
224 LM1. Results
225 are normalized to 30 pb$^{-1}$.}
226 \begin{tabular}{|c||c|c||c|c|}
227 \hline
228 SM & LM0 & BG Prediction & LM1 & BG Prediction \\
229 Background & Contribution& Including LM0 & Contribution & Including LM1 \\ \hline
230 x & x & x & x & x \\
231 \hline
232 \end{tabular}
233 \end{center}
234 \end{table}
235