scholarly journals Gathering open source information about the values of factors from the defense system environment using the method of content analysis

Vojno delo ◽  
2017 ◽  
Vol 69 (4) ◽  
pp. 190-204
Author(s):  
Vlada Mitic ◽  
Dejan Stojkovic ◽  
Milan Kankaras
Author(s):  
Sangeeta Lal ◽  
Neetu Sardana ◽  
Ashish Sureka

Log statements present in source code provide important information to the software developers because they are useful in various software development activities such as debugging, anomaly detection, and remote issue resolution. Most of the previous studies on logging analysis and prediction provide insights and results after analyzing only a few code constructs. In this chapter, the authors perform an in-depth, focused, and large-scale analysis of logging code constructs at two levels: the file level and catch-blocks level. They answer several research questions related to statistical and content analysis. Statistical and content analysis reveals the presence of differentiating properties among logged and nonlogged code constructs. Based on these findings, the authors propose a machine-learning-based model for catch-blocks logging prediction. The machine-learning-based model is found to be effective in catch-blocks logging prediction.


2019 ◽  
Vol 13 (2) ◽  
pp. 188-212
Author(s):  
Stephanie de Smale

This article examines how war memory circulates, connects and collides on digital media platforms driven by digital publics that form around popular culture. Through a case study of vernacular memory discourses emerging around a game inspired by the Yugoslav war, the article investigates how the commenting practices of YouTube users provide insights into the feelings of belonging of conflict-affected subjects that go beyond ethnicity and exceed geographical boundaries. The comments of 331 videos were analysed, using an open source tool and sequential mixed-method content analysis. Media-based collectivities emerging on YouTube are influenced by the reactive and asynchronous dynamics of comments that stimulate the emergence of micro-narratives. Within this plurality of voices, connective moments focus on shared memories of trauma and displacement beyond ethnicity. However, clashing collective memories cause disputes that reify identification along ethnic lines. The article concludes that memory discourses emerging in the margins of YouTube represent the affective reactions of serendipitous encounters between users of audio-visual content.


Author(s):  
Frederik Görlitz ◽  
Jonathan Lightley ◽  
Sunil Kumar ◽  
Edwin Garcia ◽  
Ming Yan ◽  
...  

Disasters ◽  
2005 ◽  
Vol 29 (3) ◽  
pp. 237-254 ◽  
Author(s):  
Sarah Mubareka ◽  
Delilah Al Khudhairy ◽  
Ferdinand Bonn ◽  
Sami Aoun

2017 ◽  
Vol 24 (6) ◽  
pp. 1062-1071 ◽  
Author(s):  
Tian Kang ◽  
Shaodian Zhang ◽  
Youlan Tang ◽  
Gregory W Hruby ◽  
Alexander Rusanov ◽  
...  

Abstract Objective To develop an open-source information extraction system called Eligibility Criteria Information Extraction (EliIE) for parsing and formalizing free-text clinical research eligibility criteria (EC) following Observational Medical Outcomes Partnership Common Data Model (OMOP CDM) version 5.0. Materials and Methods EliIE parses EC in 4 steps: (1) clinical entity and attribute recognition, (2) negation detection, (3) relation extraction, and (4) concept normalization and output structuring. Informaticians and domain experts were recruited to design an annotation guideline and generate a training corpus of annotated EC for 230 Alzheimer’s clinical trials, which were represented as queries against the OMOP CDM and included 8008 entities, 3550 attributes, and 3529 relations. A sequence labeling–based method was developed for automatic entity and attribute recognition. Negation detection was supported by NegEx and a set of predefined rules. Relation extraction was achieved by a support vector machine classifier. We further performed terminology-based concept normalization and output structuring. Results In task-specific evaluations, the best F1 score for entity recognition was 0.79, and for relation extraction was 0.89. The accuracy of negation detection was 0.94. The overall accuracy for query formalization was 0.71 in an end-to-end evaluation. Conclusions This study presents EliIE, an OMOP CDM–based information extraction system for automatic structuring and formalization of free-text EC. According to our evaluation, machine learning-based EliIE outperforms existing systems and shows promise to improve.


Author(s):  
Marianela Garcia Lozano ◽  
Ulrik Franke ◽  
Magnus Rosell ◽  
Vladimir Vlassov

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