25 research outputs found
Neutrinoless double beta decay constrained by the existence of large extra dimensions
We present the possible influence on the half-life of neutrinoless double
beta decay coming from the existence of extra spatial dimensions. The
half-life in question depends on the mass of the electron neutrino. We base our
analysis on the Majorana neutrino mass mechanism in
Arkani-Hamed--Dimopoulos--Dvali model.Comment: I decided to move the collection of my papers to arXiv for easier
access. Proceedings of the Nuclear Physics Workshop in Kazimierz Dolny,
Poland, 200
Fermion-boson loops with bilinear R-parity violation leading to Majorana neutrino mass and magnetic moments
We present analytic expressions corresponding to a set of one loop Feynman
diagrams, built within R-parity violating (RpV) minimal supersymmetric standard
model (MSSM). Diagrams involve both bilinear and trilinear RpV couplings and
represent Majorana neutrino masses and magnetic moments.Comment: I've decided to move the collection of my papers to arXiv for easier
access. Proceedings of the Nuclear Physics Workshop in Kazimierz Dolny,
Poland, 200
Constraining Bilinear R-Parity Violation from Neutrino Masses
We confront the R-parity violating MSSM model with the neutrino oscillation
data. Investigating the 1-loop particle-sparticle diagrams with additional
bilinear insertions on the external neutrino lines we construct the relevant
contributions to the neutrino mass matrix. A comparison of the so-obtained
matrices with the experimental ones assuming normal or inverted hierarchy and
taking into account possible CP violating phases, allows to set constraints on
the values of the bilinear coupling constants. A similar calculation is
presented with the input from the Heidelberg-Moscow neutrinoless double beta
decay experiment. We base our analysis on the renormalization group evolution
of the MSSM parameters which are unified at the GUT scale. Using the obtained
bounds we calculate the contributions to the Majorana neutrino transition
magnetic moments.Comment: I've decided to move the collection of my papers to arXiv for easier
acces
Neutrino mass in GUT constrained supersymmetry with R-parity violation in light of neutrino oscillations
The neutrino masses are generated in grand unified theory (GUT) constrained
supersymmetric model with R-parity violation. The neutrinos acquire masses via
tree-level neutrino-neutralino mixing as well as via one-loop radiative
corrections. The theoretical mass matrix is compared with the phenomenological
one, which is reconstructed by using neutrino oscillation and neutrinoless
double beta decay data. This procedure allows to obtain significantly stronger
constraints on R-parity breaking parameters than those existing in the
literature. The implication of normal and inverted neutrino mass hierarchy on
the sneutrino expectation values, lepton-Higgs bilinear and trilinear R-parity
breaking couplings is also discussed
Majorana neutrino magnetic moments
The presence of trilinear R-parity violating interactions in the MSSM
lagrangian leads to existence of quark-squark and lepton-slepton loops which
generate mass of the neutrino. By introducing interaction with an external
photon the magnetic moment is obtained. We derive bounds on that quantity being
around one order of magnitude stronger than those present in the literature.Comment: I've decided to move the collection of my papers to arXiv for easier
access. Proceedings of the Nuclear Physics Workshop in Kazimierz Dolny,
Poland, 200
Hebbian encoding in the biological visual system
We examined neural networks built of several hundred Hodgkin-Huxley neurons. The main aim of the research described below was to simulate memory processes occurring in hippocampus and biological visual system. In our model we chose the ancient Chinese I-Ching Oracle as a set of input patterns. Maps of Hebbian weights appearing on the output device of the model can be analysed by artificial neural networks playing a role of some kind of visual consciousness
Liquid state machine built of Hodgkin-Huxley neurons-pattern recognition and informational entropy
Neural networks built of Hodgkin-Huxley neurons are examined. Such structures behave like Liquid State Machines. They can effectively process geometrical patterns shown to artificial retina into precisely defined output. The analysis of output responses is performed in two ways: by means of Artificial Neural Network and by calculating informational entropy