1,680 research outputs found

    Analysis of behavior of automatic learning algorithms to identify criminal messages

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    In this type of explanation, strictly economic or criminal motives predominate: mainly the control of routes and places, and the punishment of desertion or treason. The precarious and fragmentary nature of the public discourse of drug traffickers as well as the preponderance of police narratives has concealed the strictly political dimension of "criminal" violence in Colombia. In pragmatic terms, organized crime and politics are more similar than we would like to assume. They have in common the objective of dominating territories, resources and populations; both tend to stand as a system of "parasitic intermediation". Both mafias and the state offer "protection" in exchange for payment of fees, reward loyalty and punish treason. It is the discursive acts that accompany violence and the series of institutional procedures in which they are registered that allow us to draw the line between the political and the criminal, the legitimate and the illegitimate, the just and the unjust. In Colombia, that border has lost clarity. In this study, an analysis of narco-messages found in banners, social networks and other databases is carried out by applying data mining, in order to propose a geospatial model through which it is possible to identify and geographically distribute the authors of the messages

    Trumping communitarianism: crime control and forensic DNA typing and databasing in Singapore

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    Liberalism and communitarianism have figured prominently in discussions of how to govern forensic DNA practices (forensic DNA typing and databasing). Despite the prominence of these two political philosophies and their underlying values, no studies have looked at the governance of forensic DNA practices in a nondemocratic country governed by a communitarian logic. To fill this lacuna in the literature, this article considers Singapore as an authoritarian state governed by a communitarian philosophy. The article highlights basic innovations and technologies of forensic DNA practices and articulates a liberal democratic version of ā€œbiolegalityā€ as described by Michael Lynch and Ruth McNally. It goes on to consider briefly various (political) philosophies (liberalism and communitarianism) and law enforcement models (due process and crime control models). The main part of the article records the trajectory, and hence biolegal progress, of forensic DNA practices in Singapore and compares it with trajectories in England and the United States. The article concludes that Singapore's forensic DNA practices are organized according to the crime control model and therefore safety and the war against crime and terrorism trump individual rights and legal principles such as privacy, bodily integrity, proportionality, presumption of innocence. and onus of proof

    A Comprehensive Bibliometric Analysis on Social Network Anonymization: Current Approaches and Future Directions

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    In recent decades, social network anonymization has become a crucial research field due to its pivotal role in preserving users' privacy. However, the high diversity of approaches introduced in relevant studies poses a challenge to gaining a profound understanding of the field. In response to this, the current study presents an exhaustive and well-structured bibliometric analysis of the social network anonymization field. To begin our research, related studies from the period of 2007-2022 were collected from the Scopus Database then pre-processed. Following this, the VOSviewer was used to visualize the network of authors' keywords. Subsequently, extensive statistical and network analyses were performed to identify the most prominent keywords and trending topics. Additionally, the application of co-word analysis through SciMAT and the Alluvial diagram allowed us to explore the themes of social network anonymization and scrutinize their evolution over time. These analyses culminated in an innovative taxonomy of the existing approaches and anticipation of potential trends in this domain. To the best of our knowledge, this is the first bibliometric analysis in the social network anonymization field, which offers a deeper understanding of the current state and an insightful roadmap for future research in this domain.Comment: 73 pages, 28 figure

    Social Network Analysis using Cultural Algorithms and its Variants

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    Finding relationships between social entities and discovering the underlying structures of networks are fundamental tasks for analyzing social networks. In recent years, various methods have been suggested to study these networks eļ¬ƒciently, however, due to the dynamic and complex nature that these networks have, a lot of open problems still exist in the ļ¬eld. The aim of this research is to propose an integrated computational model to study the structure and behavior of the complex social network. The focus of this research work is on two major classic problems in the ļ¬eld which are called community detection and link prediction. Moreover, a problem of population adaptation through knowledge migration in real-life social systems has been identiļ¬ed to model and study through the proposed method. To the best of our knowledge, this is the ļ¬rst work in the ļ¬eld which is exploring this concept through this approach. In this research, a new adaptive knowledge-based evolutionary framework is deļ¬ned to investigate the structure of social networks by adopting a multi-population cultural algorithm. The core of the model is designed based on a unique community-oriented approach to estimate the existence of a relationship between social entities in the network. In each evolutionary cycle, the normative knowledge is shaped through the extraction of the topological knowledge from the structure of the network. This source of knowledge is utilized for the various network analysis tasks such as estimating the quality of relation between social entities, related studies regarding the link prediction, population adaption, and knowledge formation. The main contributions of this work can be summarized in introducing a novel method to deļ¬ne, extract and represent diļ¬€erent sources of knowledge from a snapshot of a given network to determine the range of the optimal solution, and building a probability matrix to show the quality of relations between pairs of actors in the system. Introducing a new similarity metric, utilizing the prior knowledge in dynamic social network analysis and study the co-evolution of societies in a case of individual migration are another major contributions of this work. According to the obtained results, utilizing the proposed approach in community detection problem can reduce the search space size by 80%. It also can improve the accuracy of the search process in high dense networks by up to 30% compared with the other well-known methods. Addressing the link prediction problem through the proposed approach also can reach the comparable results with other methods and predict the next state of the system with a notably high accuracy. In addition, the obtained results from the study of population adaption through knowledge migration indicate that population with prior knowledge about an environment can adapt themselves to the new environment faster than the ones who do not have this knowledge if the level of changes between the two environments is less than 25%. Therefore, utilizing this approach in dynamic social network analysis can reduce the search time and space signiļ¬cantly (up to above 90%), if the snapshots of the system are taken when the level of changes in the network structure is within 25%. In summary, the experimental results indicate that this knowledge-based approach is capable of exploring the evolution and structure of the network with the high level of accuracy while it improves the performance by reducing the search space and processing time

    eXplainable data processing

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    Seminario realizado en U & P U Patel Department of Computer Engineering, Chandubhai S. Patel Institute of Technology, Charotar University of Science And Technology (CHARUSAT), Changa-388421, Gujarat, India 2021[EN]Deep Learning y has created many new opportunities, it has unfortunately also become a means for achieving ill-intentioned goals. Fake news, disinformation campaigns, and manipulated images and videos have plagued the internet which has had serious consequences on our society. The myriad of information available online means that it may be difficult to distinguish between true and fake news, leading many users to unknowingly share fake news, contributing to the spread of misinformation. The use of Deep Learning to create fake images and videos has become known as deepfake. This means that there are ever more effective and realistic forms of deception on the internet, making it more difficult for internet users to distinguish reality from fictio

    K-MEANS CLUSTERING AREAS PRONE TO TRAFFIC ACCIDENTS IN ASAHAN REGENCY

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    Traffic accidents on the highway still contribute to the high mortality rate in Indonesia, so it is of particular concern to the police in this country. Accidents occur in various places with different time events, this makes it difficult to determine which areas have a high level of traffic accident vulnerability. Information about traffic accident-prone areas is needed by the community and law enforcement. This information can be taken into consideration for supervision and anticipatory action, especially for the police. The initial stage of traffic accident prevention is to know the factors that cause traffic accidents obtained through traffic accident data analysis. The information system in this study analyzed traffic accident-prone areas in Asahan Regency. The analysis can be done with data mining, namely K-Means Clustering which can group data into several groups according to the characteristics of the data. The results of this study are the Asahan District Police Satlantas can find out the accident-prone areas in the most vulnerable categories, quite vulnerable and not vulnerable

    Monte Carlo Method with Heuristic Adjustment for Irregularly Shaped Food Product Volume Measurement

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    Volume measurement plays an important role in the production and processing of food products. Various methods have been proposed to measure the volume of food products with irregular shapes based on 3D reconstruction. However, 3D reconstruction comes with a high-priced computational cost. Furthermore, some of the volume measurement methods based on 3D reconstruction have a low accuracy. Another method for measuring volume of objects uses Monte Carlo method. Monte Carlo method performs volume measurements using random points. Monte Carlo method only requires information regarding whether random points fall inside or outside an object and does not require a 3D reconstruction. This paper proposes volume measurement using a computer vision system for irregularly shaped food products without 3D reconstruction based on Monte Carlo method with heuristic adjustment. Five images of food product were captured using five cameras and processed to produce binary images. Monte Carlo integration with heuristic adjustment was performed to measure the volume based on the information extracted from binary images. The experimental results show that the proposed method provided high accuracy and precision compared to the water displacement method. In addition, the proposed method is more accurate and faster than the space carving method
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