Free JAR experiment: data analysis and comparison with JAR task

2021 ◽  
pp. 104453
Author(s):  
Alexiane Luc ◽  
Sébastien Le ◽  
Mathilde Philippe ◽  
El Mostafa Qannari ◽  
Evelyne Vigneau
2019 ◽  
Vol 1 (2) ◽  
pp. 627-645
Author(s):  
Nisa Umahmudah A ◽  
Sany Dwita ◽  
Nayang Helma Yunita

This study aims to test empirically about: 1) The influence of culture on the accountant's decision, and 2) the influence of religiousity effect on the accountant's decision. This type of research belongs to a quasi experiment. Data in this study were collected by using questionnaires on 200 accounting students from 2 universities in Padang City and 1 university in Madura. Data analysis was done by using two-way ANOVA. The results of this study conclude that culture affects an accountant in decision making, while religiousity does not affect the accountant's decision. This study focuses on Javanese culture and Minangkabau culture with a construal of self approach in assessing accountant decisions and using accounting students as a subject to examine cultural and religiousity influences on professional accountant decisions.


2016 ◽  
Vol 140 (4) ◽  
pp. 3408-3408
Author(s):  
Kevin Williams ◽  
Michael L. Boyd ◽  
Alexander G. Soloway ◽  
Eric I. Thorsos ◽  
Steven G. Kargl ◽  
...  

2019 ◽  
Vol 214 ◽  
pp. 05038
Author(s):  
Valerio Formato

In many HEP experiments a typical data analysis workflow requires each user to read the experiment data in order to extract meaningful information and produce relevant plots for the considered analysis. Multiple users accessing the same data result in a redundant access to the data itself, which could be factorized effectively improving the CPU efficiency of the analysis jobs and relieving stress from the storage infrastructure. To address this issue we present a modular and lightweight solution where the users code is embedded in different "analysis plugins" which are then collected and loaded at runtime for execution, where the data is read only once and shared between all the different plugins. This solution was developed for one of the data analysis groups within the AMS collaboration but is easily extendable to all kinds of analyses and workloads that need I/O access on AMS data or custom data formats and can even adapted with little effort to another HEP experiment data. This framework could then be easily embedded into a "analysis train" and we will discuss a possible implementation and different ways to optimise CPU efficiency and execution time.


2018 ◽  
Vol 43 (1) ◽  
pp. 145-159 ◽  
Author(s):  
Kevin L. Williams ◽  
Michael L. Boyd ◽  
Alexander G. Soloway ◽  
Eric I. Thorsos ◽  
Steven G. Kargl ◽  
...  

2020 ◽  
Vol 8 (2) ◽  
pp. 414-424
Author(s):  
Bagus Sartono ◽  
Achmad Syaiful ◽  
Dian Ayuningtyas ◽  
Farit Mochamad Afendi ◽  
Rahma Anisa ◽  
...  

The sparsity principle suggests that the number of effects that contribute significantly to the response variable of an experiment is small.  It means that the researchers need an efficient selection procedure to identify those active effects.  Most common procedures can be found in literature work by considering an effect as an individual entity so that selection process works on individual effect.  Another principle we should consider in experimental data analysis is the heredity principle. This principle allows an interaction effect is included in the model only if the correspondence main effects are there in.  This paper addresses the selection problem that takes into account the heredity principle as Yuan et al. (2007) did using least angle regression (LARS).  Instead of selecting the effects individually, the proposed approach perform the selection process in groups.  The advantage our proposed approach, using genetic algorithm, is on the opportunity to determine the number of desired effect, which the LARS approach cannot.


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