Data
MAGIC-Gamma-Telescope-Dataset

MAGIC-Gamma-Telescope-Dataset

active ARFF Database: Open Database, Contents: Original Authors Visibility: public Uploaded 24-03-2022 by Elif Ceren Gok
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MAGIC gamma telescope data 2004 Dataset Information. The data are MC generated (see below) to simulate registration of high energy gamma particles in a ground-based atmospheric Cherenkov gamma telescope using the imaging technique. Cherenkov gamma telescope observes high energy gamma rays, taking advantage of the radiation emitted by charged particles produced inside the electromagnetic showers initiated by the gammas, and developing in the atmosphere. This Cherenkov radiation (of visible to UV wavelengths) leaks through the atmosphere and gets recorded in the detector, allowing reconstruction of the shower parameters. The available information consists of pulses left by the incoming Cherenkov photons on the photomultiplier tubes, arranged in a plane, the camera. Depending on the energy of the primary gamma, a total of few hundreds to some 10000 Cherenkov photons get collected, in patterns (called the shower image), allowing to discriminate statistically those caused by primary gammas (signal) from the images of hadronic showers initiated by cosmic rays in the upper atmosphere (background). Typically, the image of a shower after some pre-processing is an elongated cluster. Its long axis is oriented towards the camera center if the shower axis is parallel to the telescope's optical axis, i.e. if the telescope axis is directed towards a point source. A principal component analysis is performed in the camera plane, which results in a correlation axis and defines an ellipse. If the depositions were distributed as a bivariate Gaussian, this would be an equidensity ellipse. The characteristic parameters of this ellipse (often called Hillas parameters) are among the image parameters that can be used for discrimination. The energy depositions are typically asymmetric along the major axis, and this asymmetry can also be used in discrimination. There are, in addition, further discriminating characteristics, like the extent of the cluster in the image plane, or the total sum of depositions. The data set was generated by a Monte Carlo program, Corsika, described in D. Heck et al., CORSIKA, A Monte Carlo code to simulate extensive air showers, Forschungszentrum Karlsruhe FZKA 6019 (1998). The program was run with parameters allowing to observe events with energies down to below 50 GeV. Number of Instances: 19020 Number of Attributes: 11 (including the class) Attribute information: 1. fLength: continuous - major axis of ellipse [mm] 2. fWidth: continuous - minor axis of ellipse [mm] 3. fSize: continuous - 10-log of sum of content of all pixels [in phot] 4. fConc: continuous - ratio of sum of two highest pixels over fSize [ratio] 5. fConc1: continuous - ratio of highest pixel over fSize [ratio] 6. fAsym: continuous - distance from highest pixel to center, projected onto major axis [mm] 7. fM3Long: continuous - 3rd root of third moment along major axis [mm] 8. fM3Trans: continuous - 3rd root of third moment along minor axis [mm] 9. fAlpha: continuous - angle of major axis with vector to origin [deg] 10. fDist: continuous - distance from origin to center of ellipse [mm] 11. class: g,h - gamma (signal), hadron (background) Missing Attribute Values: None Class Distribution: g = gamma (signal): 12332 h = hadron (background): 6688 For technical reasons, the number of h events is underestimated. In the real data, the h class represents the majority of the events. The simple classification accuracy is not meaningful for this data, since classifying a background event as signal is worse than classifying a signal event as background. For comparison of different classifiers an ROC curve has to be used. The relevant points on this curve are those, where the probability of accepting a background event as signal is below one of the following thresholds: 0.01, 0.02, 0.05, 0.1, 0.2 depending on the required quality of the sample of the accepted events for different experiments. Sources: (a) Original owner of the database: R. K. Bock Major Atmospheric Gamma Imaging Cherenkov Telescope project (MAGIC) http://wwwmagic.mppmu.mpg.de rkbmail.cern.ch (b) Donor: P. Savicky Institute of Computer Science, AS of CR Czech Republic savickycs.cas.cz (c) Date received: May 2007 Past Usage: (a) Bock, R.K., Chilingarian, A., Gaug, M., Hakl, F., Hengstebeck, T., Jirina, M., Klaschka, J., Kotrc, E., Savicky, P., Towers, S., Vaicilius, A., Wittek W. (2004). Methods for multidimensional event classification: a case study using images from a Cherenkov gamma-ray telescope. Nucl.Instr.Meth. A, 516, pp. 511-528. (b) P. Savicky, E. Kotrc. Experimental Study of Leaf Confidences for Random Forest. Proceedings of COMPSTAT 2004, In: Computational Statistics. (Ed.: Antoch J.) - Heidelberg, Physica Verlag 2004, pp. 1767-1774. (c) J. Dvorak, P. Savicky. Softening Splits in Decision Trees Using Simulated Annealing. Proceedings of ICANNGA 2007, Warsaw, (Ed.: Beliczynski et. al), Part I, LNCS 4431, pp. 721-729.

12 features

Unnamed:_0numeric19020 unique values
0 missing
fLengthnumeric18643 unique values
0 missing
fWidthnumeric18200 unique values
0 missing
fSizenumeric7228 unique values
0 missing
fConcnumeric6410 unique values
0 missing
fConc1numeric4421 unique values
0 missing
fAsymnumeric18704 unique values
0 missing
fM3Longnumeric18693 unique values
0 missing
fM3Transnumeric18390 unique values
0 missing
fAlphanumeric17981 unique values
0 missing
fDistnumeric18437 unique values
0 missing
classstring2 unique values
0 missing

19 properties

19020
Number of instances (rows) of the dataset.
12
Number of attributes (columns) of the dataset.
Number of distinct values of the target attribute (if it is nominal).
0
Number of missing values in the dataset.
0
Number of instances with at least one value missing.
11
Number of numeric attributes.
0
Number of nominal attributes.
0
Number of attributes divided by the number of instances.
91.67
Percentage of numeric attributes.
Percentage of instances belonging to the most frequent class.
0
Percentage of nominal attributes.
Number of instances belonging to the most frequent class.
Percentage of instances belonging to the least frequent class.
Number of instances belonging to the least frequent class.
0
Number of binary attributes.
0
Percentage of binary attributes.
0
Percentage of instances having missing values.
Average class difference between consecutive instances.
0
Percentage of missing values.

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