scholarly journals Computational Personality Prediction Based on Digital Footprint of A Social Media User

2019 ◽  
Vol 156 ◽  
pp. 185-193 ◽  
Author(s):  
Irina Deeva
Author(s):  
Hetal Vora ◽  
Mamta Bhamare ◽  
Dr. K. Ashok Kumar ◽  

Author(s):  
Lei Zhang ◽  
Liang Zhao ◽  
Xuchao Zhang ◽  
Wenmo Kong ◽  
Zitong Sheng ◽  
...  

2017 ◽  
Vol 42 (3) ◽  
Author(s):  
Donell Holloway ◽  
Lelia Green

AbstractDomestic photography and the family photograph album hold significance as artefacts “communicating an ideal familial image and reifying the familial bonds, and also preserving a memory of a specific time” (Sarvas and Frohlich, 2011, p. 148). However, today’s practice of domestic photography is generally relocated to social media (Sarvas and Frohlich, 2011). Photographs previously found in the family photograph album are now likely to be located on the screens of phones and tablets.Using a Domestication of Technology framework, this article discusses how families are using Facebook to create, curate, share and archive family memories. It shows how families go through the phases of appropriation, incorporation, objectification and conversion when they adopt Facebook as the family photograph album. The authors also explore ways in which virtual family photograph albums can result in parental tension around domestic tasks of sharing and archiving family memories online, along with the possible implications of creating a potentially embarrassing, unauthorized digital footprint for their children.


2014 ◽  
pp. 149-154
Author(s):  
Elliott Payne

The explosion of social networking sites in recent years has given many Kim Kardashian wannabes an opportunity to display and glamorise their supposed activities and achievements. However, it has also unwittingly given employers an opportunity to pry into the personal (and at times very personal) affairs of their prospective employees through the practice of cyber-vetting. Social media users should take note. They should think very carefully before they post, tweet or upload a photograph as their future employer may be watching and to paraphrase US Chief Judge Alex Kozinski, removing something from the Internet is about as easy as removing urine from a swimming pool! Dr Brenda Berkelaar of Purdue University, who completed a PhD on cyber-vetting, described the practice as: “when organizations use information from search engines or social networking communities to evaluate job candidates.” In its simplest form, cyber-vetting is the examination by employers of the digital footprint ...


2020 ◽  
Author(s):  
Qi Yan ◽  
Katherine J. Jensen ◽  
Rose Thomas ◽  
Alyssa R. Langley ◽  
Jiang Zheng ◽  
...  

BACKGROUND The Internet has become a popular platform for patients to obtain information and review the providers they interact with. However, little is known on the digital footprint of vascular surgeons and their interactivity with patients on social media. OBJECTIVE This study aims to understand the activity of academic vascular surgeons on physician rating websites. METHODS Information on attending vascular surgeons affiliated with vascular residency or fellowships in the Southern Association for Vascular Surgery was collected from public sources. A listing of websites containing physician rating was obtained via literature review and google search. Open access websites that contain either qualitative or quantitative evaluation of vascular surgeons were included. Closed access websites were excluded. Ranking scores from each website were converted to a standard 5-point scale for comparison. RESULTS A total of 6238 quantitative and 967 qualitative reviews were written for 287 physicians (236 males, 82%) across 16 websites that met inclusion criteria out of 62 websites screened. Surgeons in the SAVS region had a median of 8 (interquartile range; 7-10) profiles across 16 websites with only one surgeon having no web presence on any sites. The median number of quantitative ratings for each physician was 17 (interquartile range; 6-34, range; 1-137) and the median number of narrative reviews was 3 (interquartile range; 2-6, range; 1-28). Vitals, WebMD and Healthgrades were the only three websites where over a quarter of the physicians were rated, and those rated had more than 5 ratings on average. The median score for quantitative reviews was 4.4 (interquartile range; 4.0-4.9). Most narrative reviews (78.4%, 758/967) were positive, but 20.2% were considered negative, only 1.4% were considered equivocal. No statistical difference was found in the number of quantitative reviews or overall average score in physicians with versus without social media profiles. CONCLUSIONS Vascular representation on physician rating websites is varied with the majority of vascular surgeons only represented on the top half of the physician rating websites. The number of quantitative and qualitative reviews are low. No surgeons responded to reviews. The activity of vascular surgeons in this area of social media is low and reflects a small digital footprint that patients can reach and review.


2021 ◽  
Vol 8 (1) ◽  
Author(s):  
Hans Christian ◽  
Derwin Suhartono ◽  
Andry Chowanda ◽  
Kamal Z. Zamli

AbstractThe ever-increasing social media users has dramatically contributed to significant growth as far as the volume of online information is concerned. Often, the contents that these users put in social media can give valuable insights on their personalities (e.g., in terms of predicting job satisfaction, specific preferences, as well as the success of professional and romantic relationship) and getting it without the hassle of taking formal personality test. Termed personality prediction, the process involves extracting the digital content into features and mapping it according to a personality model. Owing to its simplicity and proven capability, a well-known personality model, called the big five personality traits, has often been adopted in the literature as the de facto standard for personality assessment. To date, there are many algorithms that can be used to extract embedded contextualized word from textual data for personality prediction system; some of them are based on ensembled model and deep learning. Although useful, existing algorithms such as RNN and LSTM suffers from the following limitations. Firstly, these algorithms take a long time to train the model owing to its sequential inputs. Secondly, these algorithms also lack the ability to capture the true (semantic) meaning of words; therefore, the context is slightly lost. To address these aforementioned limitations, this paper introduces a new prediction using multi model deep learning architecture combined with multiple pre-trained language model such as BERT, RoBERTa, and XLNet as features extraction method on social media data sources. Finally, the system takes the decision based on model averaging to make prediction. Unlike earlier work which adopts a single social media data with open and close vocabulary extraction method, the proposed work uses multiple social media data sources namely Facebook and Twitter and produce a predictive model for each trait using bidirectional context feature combine with extraction method. Our experience with the proposed work has been encouraging as it has outperformed similar existing works in the literature. More precisely, our results achieve a maximum accuracy of 86.2% and 0.912 f1 measure score on the Facebook dataset; 88.5% accuracy and 0.882 f1 measure score on the Twitter dataset.


2019 ◽  
Vol 18 (02) ◽  
pp. 601-627 ◽  
Author(s):  
Yuh-Jen Chen ◽  
Yuh-Min Chen ◽  
Yu-Jen Hsu ◽  
Jyun-Han Wu

In the past, enterprises used time-consuming questionnaire surveys and statistical analysis to formulate consumer profiles. However, explosive growth in social media had produced enormous quantities of texts, images, and videos, which is sometimes referred to as a digital footprint. This provides an alternative channel for enterprises seeking to gain an objective understanding of their target consumers. Facilitating the analysis of data used in the formulation of a marketing strategy based on digital footprints from online social media is crucial for enterprises seeking to enhance their competitive advantage in today’s markets. This study develops an approach for predicting consumer decision-making styles by analyzing digital footprints on Facebook to assist enterprises in rapidly and correctly mastering the consumption profile of consumers, thereby reducing marketing costs and promoting customer satisfaction. This objective can be achieved by performing the following tasks: (i) designing a process for predicting consumer decision-making styles based on the analysis of digital footprints on Facebook, (ii) developing techniques related to consumer decision-making style prediction, and (iii) implementing and evaluating a consumer decision-making style prediction mechanism. In the practical experiment, we obtained questionnaires and various digital footprint contents (including “Likes,” “Status,” and “Photo/Video”) from 3304 participants in 2018, 2644 of which were randomly selected as a training dataset, with the remaining 660 participants forming a testing dataset. The experimental results indicated that the accuracy increased to 75.88% and proved that the approach proposed in this study can effectively predict consumers’ decision-making styles.


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