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Institution

University of Sannio

EducationBenevento, Italy
About: University of Sannio is a education organization based out in Benevento, Italy. It is known for research contribution in the topics: Gravitational wave & LIGO. The organization has 1278 authors who have published 6125 publications receiving 167577 citations. The organization is also known as: Università degli Studi del Sannio & Universita degli Studi del Sannio.


Papers
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Journal ArticleDOI
B. P. Abbott1, R. Abbott1, Rana X. Adhikari1, P. Ajith2  +510 moreInstitutions (57)
TL;DR: In this paper, a matched-filter search for gravitational wave bursts from cosmic string cusps using LIGO data from the fourth science run (S4) which took place in February and March 2005 was reported.
Abstract: We report on a matched-filter search for gravitational wave bursts from cosmic string cusps using LIGO data from the fourth science run (S4) which took place in February and March 2005. No gravitational waves were detected in 14.9 days of data from times when all three LIGO detectors were operating. We interpret the result in terms of a frequentist upper limit on the rate of gravitational wave bursts and use the limits on the rate to constrain the parameter space (string tension, reconnection probability, and loop sizes) of cosmic string models. Many grand unified theory-scale models (with string tension Gμ/c2≈10-6) can be ruled out at 90% confidence for reconnection probabilities p≤10-3 if loop sizes are set by gravitational back reaction.

67 citations

Journal ArticleDOI
TL;DR: In this paper, the authors summarize some recent literature data concerning the stereochemical mechanism of α-olefin polymerization promoted by late transition metal systems and bi-and tetra-dentate imine phenolate group 4 metal complexes.

67 citations

Journal ArticleDOI
C. Ahdida1, Raffaele Albanese2, A. Alexandrov, A. M. Anokhina3  +345 moreInstitutions (49)
TL;DR: In this article, the Search for Hidden Particles (SHiP) Collaboration has shown that the CERN SPS accelerator with its 400 GeV/c proton beam offers a unique opportunity to explore the Hidden Sector.
Abstract: The Search for Hidden Particles (SHiP) Collaboration has shown that the CERN SPS accelerator with its 400 GeV/c proton beam offers a unique opportunity to explore the Hidden Sector [1–3]. The proposed experiment is an intensity frontier experiment which is capable of searching for hidden particles through both visible decays and through scattering signatures from recoil of electrons or nuclei. The high-intensity experimental facility developed by the SHiP Collaboration is based on a number of key features and developments which provide the possibility of probing a large part of the parameter space for a wide range of models with light long-lived super-weakly interacting particles with masses up to (10) GeV/c2 in an environment of extremely clean background conditions. This paper describes the proposal for the experimental facility together with the most important feasibility studies. The paper focuses on the challenging new ideas behind the beam extraction and beam delivery, the proton beam dump, and the suppression of beam-induced background.

67 citations

Journal ArticleDOI
TL;DR: In this paper, the authors proposed a heuristic to remove the noise in the textual content of software artifacts by taking into account the linguistic nature of words in the software artifacts, where the words that provide more indication on the semantics of a document are the nouns.
Abstract: SUMMARY One of the most successful applications of textual analysis in software engineering is the use of information retrieval (IR) methods to reconstruct traceability links between software artifacts. Unfortunately, because of the limitations of both the humans developing artifacts and the IR techniques any IR-based traceability recovery method fails to retrieve some of the correct links, while on the other hand it also retrieves links that are not correct. This limitation has posed challenges for researchers that have proposed several methods to improve the accuracy of IR-based traceability recovery methods by removing the ‘noise’ in the textual content of software artifacts (e.g., by removing common words or increasing the importance of critical terms). In this paper, we propose a heuristic to remove the ‘noise’ taking into account the linguistic nature of words in the software artifacts. In particular, the language used in software documents can be classified as a technical language, where the words that provide more indication on the semantics of a document are the nouns. The results of a case study conducted on five software artifact repositories indicate that characterizing the context of software artifacts considering only nouns significantly improves the accuracy of IR-based traceability recovery methods. Copyright © 2012 John Wiley & Sons, Ltd.

67 citations

Journal ArticleDOI
TL;DR: In this article, a refined finite element (FE) numerical approach is proposed to predict both global and local behavior of steel-concrete composite welded joints subjected to seismic loads.

67 citations


Authors

Showing all 1300 results

NameH-indexPapersCitations
Alberto Vecchio11557279416
Andrea Alù109113847717
Vijay P. Singh106169955831
Kenneth A. Strain10548570966
N. A. Robertson10538469504
G. D. Hammond10035267549
B. Sorazu9834765989
I. W. Martin9735264772
Maria Ilaria Del Principe9339862000
Innocenzo M. Pinto8937856567
Karl Henrik Johansson88108933751
Vincenzo Pierro8326342535
R. DeSalvo8322551227
Paolo Addesso7120245552
Francesco Borrelli6632717254
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202322
202254
2021404
2020401
2019389
2018376