Measurements with b-jets and b-tagging

Post on 16-Feb-2016

32 views 0 download

Tags:

description

Measurements with b-jets and b-tagging. G. Watts (UW/Seattle) November 12, 2012. CHICAGO Workshop on LHC Physics in the Higgs Era. b -Tagging. The LHC program requires us to address bottom quarks as a unique object. Signals. Low mass Higgs, SUSY high , etc. Backgrounds. W+jets, Z, and . - PowerPoint PPT Presentation

transcript

Measurements with b-jets and b-tagging

G. Watts (UW/Seattle)November 12, 2012

CHICAGO Workshop on LHC Physics in the Higgs Era

G. Watts (UW/Seattle) 2

b-TaggingThe LHC program requires us to address bottom quarks as a unique object

Signals Low mass Higgs, SUSY high , etc.

Backgrounds W+jets, Z, and

This is not black-box object ID

The identification algorithms are getting quite complex

Their calibration are full blown analyses in their own right(and take quite a bit of time)

G. Watts (UW/Seattle) 3

Anatomy of a b-quark

Decays via the Weak Force

~20% of decays are semileptonic

G. Watts (UW/Seattle) 4

Anatomy of a b-quark

B

š‘’ ,šœ‡Semileptonic Decays

Electron

Electron embedded in jet extraordinarily difficultMuon

MIP in calorimeter, easy to identify in muon chambers, even low

Used heavily in calibrationLess so in analysis

G. Watts (UW/Seattle) 5

Semileptonic TaggingMuon, GeV,

Lots of material in front of muon chambersā€¦CMS Calib uses GeV

Calibration

Muon ID

Trust Monte Carlo

Used by CMS in their high mass Higgs search

š»ā†’š‘š‘ā†’ā„“ā„“šœˆšœˆUsed with regular b-tagging as a veto

(Binary Decision)

G. Watts (UW/Seattle) 6

Anatomy of a b-quark

B

Hard ScatterDecay Length (Lxy)

Impact Parameter (IP)

š‘šœ ā‰ˆ 450šœ‡š‘š mm at the LHC! ,

Algorithms tuned to take advantage of one or more of these features

G. Watts (UW/Seattle) 7

Silicon

Pixel detectors have made this ā€œeasyā€ at the LHC

G. Watts (UW/Seattle) 8

Tagging AlgorithmsTracks

Count the number of tracks in a jetCuts on impact parameterHighly efficient

Vertex ReconstructionFit the tracks looking for a displaced vertexEfficiency has relatively low plateauMany variations

CombinedUse elements of bothRecovers some of the efficiencyOften use MVA techniques

G. Watts (UW/Seattle) 9

Must Understand Tracking!

CMS Low (agreement justas good at high )ATLAS

G. Watts (UW/Seattle) 10

Counting Tracks Long, rich, history (CSIP, JLIP, etc.)

CMS Track Counting (TC) Algorithm

Ranks tracks by IP significance

2nd highest track is the discrimination variable

Many variations on a theme

Loose, Medium Operating Points

Used in 2011 CMS

Simple taggers, easy to understand, good for early data!

G. Watts (UW/Seattle) 11

Secondary Vertex FindingATLAS: Basic Kalman FitterCMS: Adaptive Vertex Fitter

Typical Tracks: GeVRequire inner layer hits

Reject 2 track vertices consistent with , conversions

Purity is great!

Efficiency can be a problem!

Used in early dataā€¦

G. Watts (UW/Seattle) 12

Combined AlgorithmsAttempt to combine the best of both worlds.

Combination techniques: likelihood, NN, BDT, etc. The input variables

CMS (likelihood) - CSVā€¢ Vertex Typeā€¢ 2D significanceā€¢ IP Significance of all tracksā€¢ Vertex Massā€¢ in vertex and jetā€¢ Ratio of energy of tracks in vertex

to tracks in jetā€¢ The of the tracksā€¢ 2D IP significance of first non-

charm track

ATLAS (NN) ā€“ MV1ā€¢ Uses only outputs of other tagging

algorithmsā€¢ IP3D ā€“ track based algorithmā€¢ SV1 ā€“ Secondary vertex finding

algorithmā€¢ JetFitterCOMBNN

These are the algorithms used by most analyses

ATLAS has really converged on this one algorithm

G. Watts (UW/Seattle) 13

CharmCharm mesons also decay by the weak forceTypical tag rates are 15-20% of bottom tag rates

Specific algorithms have been designed to identify jets containing only charm

CMSRank tracks in a vertex by IP significance

One track at a time add to a vertex

First track where GeV is likely due to a bottom quark

Combine likelihoods to reject charm in CSV

Can be a significant background in W+jets, etc.

G. Watts (UW/Seattle) 14

CharmCascade charm/bottom decay reconstruction

Bottom Decay

Charm DecayFit to a single line hypothesis

Single track vertices are possible

NN to aggregate the final valuesIP3D is also added in

ATLAS

The ā€œJetFitterCOMBā€ algorithmAn input to the MV1

JetFitterCOMBNNc is a variant tuned to reject charm

G. Watts (UW/Seattle) 15

Performance

G. Watts (UW/Seattle) 16

Performance

You canā€™t compare CMS and ATLAS!

G. Watts (UW/Seattle) 17

CalibrationThere is no clean sample of jets

known to be bottom quarks!

š‘ā†’š‘’+Ā暝‘’āˆ’Āæ

The QCD background is just too great!

Two bottom quark rich samples are used instead

QCD dijet events

Production

Hard because the b fraction is unknownHard because itā€™sā€¦ top.

Calibration Scale Factor and Systematic Error

Errors driven by statistics and ability to determine b-fraction

G. Watts (UW/Seattle) 18

The techniques matterFrom the 2011 ATLAS Analysis

(used dijet calibration only)

We expect dijet to be most powerful at low jet , and calibration at high jet

G. Watts (UW/Seattle) 19

Operating PointsMost tagging algorithms produce a continuous output

Why not use as MVA input?(CDF has already done this in most recent SM WH results)

G. Watts (UW/Seattle) 20

Performance & CalibrationPerformance is a function of

at least (binned)

Add another axis: tag discrimination variable

Statistics are low!

Calibrate in terms of Operating Points

šœ–š‘>š‘‹

G. Watts (UW/Seattle) 21

Calibration Results

š‘” š‘”dijets

Both experiments combine calibrations

G. Watts (UW/Seattle) 22

Using b-taggingStraight Forward Search

Require at least 1 (2) jets to be tagged

Relatively high efficiency with 2 tags

Many of the early searches used this technique

Search with binning by

Split analysis: 0 tags, 1 tag, 2 tagsSpliting by

Tag requirements often different

Will we do better with continuous tagging?

G. Watts (UW/Seattle) 23

Using b-tagging

Veto

Use a high efficiency operating point & algorithm

Used to suppress a background containing heavy flavor.

In suppresses backgroundIn used to suppress backgrounds

G. Watts (UW/Seattle) 24

Using b-taggingCMS uses b-tagging to improve the mass resolution

Events are chosen using standard search techniques

Use a Boosted Decision Tree to improve the bottom jet energy resolutionā€¢ Properties of a found secondary vertexā€¢ Properties of the tracks (IP, etc.)ā€¢ Jet Energy related variables

1

15% increase in mass resolution

Final Discriminate2

ā€¢ CSV max and min value for b-tagged jet

ā€¢ Calibration done at many points enables this

G. Watts (UW/Seattle) 25

Conclusions: Future Better Combinations

Both experiments have some techniques that might benefit each other Calibration Improvements

High luminosity and statistics should shrink the b-tagging error Direct calibration of charm and tau backgrounds instead of Monte Carlo ratios

Continuous Tagging Using the output of a combined b-tagging algorithm directly as input Final variable fit for analysis ordered in significance

Better Treatment of systematic errors Errors are being driven further into the analysis Common errors like Jet Energy Scale need to be varied in common Technically challenging

High Tagging Efficiency turnover occurs around 200 GeV Calibration is very difficult due to statistics

Other types of taggers? ATLAS has a double-bottom quark tagger ()

G. Watts (UW/Seattle) 26

Conclusions The 2012 calibration should be stunning

And its effect should be obvious in the HCP results b-tagging continues to evolve

Many possible improvements We are still a good way from the point of diminishing returns

Though we tryā€¦

Challenge: are there ways to use b-tagging in analysis with more than a highly tuned MVA?

How much will we improve on this as opposed to getting read for new data ()

I didnā€™t mention high bottom quark searches Their use of b-tagging is similar to the SM analyses See Keithā€™s talk tomorrow