Reliable Online Social Network Data Collection
نویسندگان
چکیده
Large quantities of information are shared through online social networks, making them attractive sources of data for social network research. When studying the usage of online social networks, these data may not describe properly users’ behaviours. For instance, the data collected often include content shared by the users only, or content accessible to the researchers, hence obfuscating a large amount of data that would help understanding users’ behaviours and privacy concerns. Moreover, the data collection methods employed in experiments may also have an effect on data reliability when participants self-report inacurrate information or are observed while using a simulated application. Understanding the effects of these collection methods on data reliability is paramount for the study of social networks; for understanding user behaviour; for designing socially-aware applications and services; and for mining data collected from such social networks and applications. This chapter reviews previous research which has looked at social network data collection and user behaviour in these networks. We highlight shortcomings in the methods used in these studies, and introduce our own methodology and user study based on the Experience Sampling Method; we claim our methodology leads to the collection of more reliable data by capturing both those data which are shared and not shared. We conclude with suggestions for collecting and mining data from online social networks.
منابع مشابه
اعتیاد به شبکه های اجتماعی و بازی های آنلاین: بررسی درد در ناحیه مچ دست در دانشجویان
Introduction: Nowadays, the use of the Internet among students has become widespread. Addiction to virtual networks and online games can have various consequences, including the threat of musculoskeletal system in these people. The purpose of this study was to determine the effect of addiction to social networks and online games on students' wrist pain. Materials & Methods: This study was con...
متن کاملOnline Privacy Concerns when Using Online Services (comparison of SNS, cloud storage services, and mobile banking services)
This study investigates the influencing factors of online privacy concerns in using social network services, cloud storage services, and mobile banking services in South Korea. We induced that influencing factors to online privacy concerns are awareness of privacy issues, the perceived ability to control data collection and its subsequent use, and a perceived vulnerability to personal data coll...
متن کاملOnline Deception Detection Refueled by Real World Data Collection
The lack of large realistic datasets presents a bottleneck in online deception detection studies. In this paper, we apply a data collection method based on social network analysis to quickly identify highquality deceptive and truthful online reviews1 from Amazon. The dataset contains more than 10,000 deceptive reviews and is diverse in product domains and reviewers. Using this dataset, we explo...
متن کاملA centralized privacy-preserving framework for online social networks
There are some critical privacy concerns in the current online social networks (OSNs). Users' information is disclosed to different entities that they were not supposed to access. Furthermore, the notion of friendship is inadequate in OSNs since the degree of social relationships between users dynamically changes over the time. Additionally, users may define similar privacy settings for their f...
متن کاملDevelopment and psychometric properties of the Social Network Sites Engagement Scale (SNSES)
Aim: The aim of this study was to develop a valid and reliable tool for measuring the level of peoplechr('39')s participation in social network sites (SNS). Method: This research is in the R&D field in terms of purpose and is descriptive-survey type in terms of data collection method (research design). 979 students were selected out of all students studying in the University of Guilan in 2017-2...
متن کامل