Crime Prediction Using Twitter Data

2021 ◽  
Vol 17 (3) ◽  
pp. 62-74
Author(s):  
Lydia Jane G. ◽  
Seetha Hari

As social media platforms are being increasingly used across the world, there are many prospects to using the data for prediction and analysis. In the Twitter platform, there are discussions about any events, passions, and many more topics. All these discussions are publicly available. This makes Twitter the ultimate source to use the data as an augmentation for the decision support systems. In this paper, the use of GPS tagged tweets for crime prediction is researched. The Twitter data is collected from Chicago and cleaned, and topic modelling is applied to the resultant set. Before topic modelling, an algorithm has been developed to identify tweets that are relevant to the crime prediction problem. Once the relevant tweets are identified, topic modelling is applied to find out the major crimes in the different beats of Chicago. Kernel density estimation (KDE) is applied to traditional data. The result of this and topic modelling are used to predict the crime count for each beat using logistic regression.

2019 ◽  
Author(s):  
Laila Fariha Zein ◽  
Adib Rifqi Setiawan

In today’s world, it is easier and easier to stay connected with people who are halfway across the world. Social media and a globalizing economy have created new methods of business, trade and socialization resulting in vast amounts of communication and effecting global commerce. Like her or hate her, Kimberly Noel Kardashian West as known as Kim Kardashian has capitalized on social media platforms and the globalizing economy. Kim is known for two things: famous for doing nothing and infamous for a sex tape. But Kim has not let those things define her. With over 105 million Instagram followers and 57 million Twitter followers, Kim has become a major global influence. Kim has travelled around the world, utilizing the success she has had on social media to teach make-up master classes with professional make-up artist, Mario Dedivanovic. She owns or has licensed several different businesses including: an emoji app, a personal app, a gaming app, a cosmetics line, and a fragrance line. Not to be forgotten, the Kardashian family show, ‘Keeping Up with the Kardashians’ has been on the air for ten years with Kim at the forefront. Kim also has three books: ‘Kardashian Konfidential’, ‘Dollhouse’, and ‘Selfish’. With her rising social media following, Kim has used the platforms to show her support for politicians and causes, particularly, recognition of the Armenian genocide. Kim also recently spoke at the Forbes’ women’s summit. Following the summit, Kim tweeted out her support for a recent movement on Twitter, #freeCyntoiaBrown which advocated for a young woman who claimed to have shot and killed the man who held her captive as a teenage sex slave in self-defense. Kim had her own personal lawyers help out Cyntoia on her case. Kim has also moved beyond advocating for issues within the confines of the United States. As mentioned earlier, she is known for advocating for recognition of the Armenian genocide. In the last two years, her show has made it a point to address the Armenian situation as it was then and as it is now. Kim has been recognized as a global influencer by others across the wordl. We believe Kim has become the same as political leaders when it comes to influencing the public. Kim’s story reveals that the new reality creates a perfect opportunity for mass disturbances or for initiating mass support or mass disapproval. Although Kim is typically viewed for her significance to pop culture, Kim’s business and social media following have placed her deep into the mix of international commerce. As her businesses continue to grow and thrive, we may see more of her influence on international issues and an increase in the commerce from which her businesses benefit.


2019 ◽  
Author(s):  
Joseph Tassone ◽  
Peizhi Yan ◽  
Mackenzie Simpson ◽  
Chetan Mendhe ◽  
Vijay Mago ◽  
...  

BACKGROUND The collection and examination of social media has become a useful mechanism for studying the mental activity and behavior tendencies of users. OBJECTIVE Through the analysis of a collected set of Twitter data, a model will be developed for predicting positively referenced, drug-related tweets. From this, trends and correlations can be determined. METHODS Twitter social media tweets and attribute data were collected and processed using topic pertaining keywords, such as drug slang and use-conditions (methods of drug consumption). Potential candidates were preprocessed resulting in a dataset 3,696,150 rows. The predictive classification power of multiple methods was compared including regression, decision trees, and CNN-based classifiers. For the latter, a deep learning approach was implemented to screen and analyze the semantic meaning of the tweets. RESULTS The logistic regression and decision tree models utilized 12,142 data points for training and 1041 data points for testing. The results calculated from the logistic regression models respectively displayed an accuracy of 54.56% and 57.44%, and an AUC of 0.58. While an improvement, the decision tree concluded with an accuracy of 63.40% and an AUC of 0.68. All these values implied a low predictive capability with little to no discrimination. Conversely, the CNN-based classifiers presented a heavy improvement, between the two models tested. The first was trained with 2,661 manually labeled samples, while the other included synthetically generated tweets culminating in 12,142 samples. The accuracy scores were 76.35% and 82.31%, with an AUC of 0.90 and 0.91. Using association rule mining in conjunction with the CNN-based classifier showed a high likelihood for keywords such as “smoke”, “cocaine”, and “marijuana” triggering a drug-positive classification. CONCLUSIONS Predictive analysis without a CNN is limited and possibly fruitless. Attribute-based models presented little predictive capability and were not suitable for analyzing this type of data. The semantic meaning of the tweets needed to be utilized, giving the CNN-based classifier an advantage over other solutions. Additionally, commonly mentioned drugs had a level of correspondence with frequently used illicit substances, proving the practical usefulness of this system. Lastly, the synthetically generated set provided increased scores, improving the predictive capability. CLINICALTRIAL None


Author(s):  
Judy O'Connell

Technology and social media platforms are driving an unprecedented reorganization of the learning environment in and beyond schools around the world. Technology provides us leadership challenges, and at the same time offers opportunities for communication and learning through technology channels to support professional development. School librarians and teacher librarians are often working as the sole information practitioner in their school, and need to stay in touch with others beyond their own school to develop their personal professional capacity to lead within their school. The Australian Teacher Librarian Network aims to make a difference, and supports school library staff in Australia and around the world to build professional networks and personal learning connections, offering an open and free exchange of ideas, strategies and resources to build collegiality. This ongoing professional conversation through online and social media channels is an important way to connect, communicate and collaborate in building a vibrant future for school librarians.


The rise of social media platforms like Twitter and the increasing adoption by people in order to stay connected provide a large source of data to perform analysis based on the various trends, events and even various personalities. Such analysis also provides insight into a person’s likes and inclinations in real time independent of the data size. Several techniques have been created to retrieve such data however the most efficient technique is clustering. This paper provides an overview of the algorithms of the various clustering methods as well as looking at their efficiency in determining trending information. The clustered data may be further classified by topics for real time analysis on a large dynamic data set. In this paper, data classification is performed and analyzed for flaws followed by another classification on the same data set.


Author(s):  
Ogbu S. U. ◽  
Olupohunda Bayo Festus

In Nigeria, during the agitation for Biafra by the Nnamdi Kanu-led Indigenous People of Biafra between 2013 and 2017, the role of Facebook in the dissemination of hate messages by the protagonists and those in opposition to the agitation raised concern about the role of social media as a tool for the spread of hate messages. It is against this background that this research was designed to evaluate the role of Facebook in the spread of hate messages over the agitation for the separate state of Biafra. The study adopted the exploratory design and the mix method approach; both quantitative and qualitative methods were employed. For the quantitative data, 400 questionnaires were administered on purposively sampled respondents. The surveys were analyzed using simple percentages and frequency distribution. Also, content analysis of some purposively selected Facebook messages was carried out. In the end, the research found that hate messages were propagated through Facebook using six major channels during the agitation for Biafra between 2013 and 2017. They include; Facebook Personal Profiles, Status Updates and Wall Postings, Facebook Group Chats, Facebook Video Uploads, Individual Comments and Likes, Video Shares and Reposts, and sharing of articles and links to other social media platforms. In line with its findings, the research recommended that Facebook should review its community standards and policies on postings of hate messages through its medium and also strengthen its regulatory mechanisms to ensure that it does not provide a platform anymore for propagators of hate messages in Nigeria and around the world.


2021 ◽  
Vol 31 (2) ◽  
pp. 269-276
Author(s):  
Prashanth Bhat

Widespread dissemination of hate speech on corporate social media platforms such as Twitter, Facebook, and YouTube has necessitated technological companies to moderate content on their platforms. At the receiving end of these content moderation efforts are supporters of right-wing populist parties, who have gained notoriety for harassing journalists, spreading disinformation, and vilifying liberal activists. In recent months, several prominent right-wing figures across the world were removed from social media - a phenomenon also known as ‘deplatforming’- for violating platform policies. Prominent among such right-wing groups are online supporters of the Hindu nationalist Bharatiya Janata Party (BJP) in India, who have begun accusing corporate social media of pursuing a ‘liberal agenda’ and ‘curtailing free speech.’ In response to deplatforming, the BJP-led Government of India has aggressively promoted and embraced Koo, an indigenously developed social media platform. This commentary examines the implications of this alternative social platform for the online communicative environment in the Indian public sphere.


Author(s):  
Bilge Yesil

Using social media platforms to document excessive police force at times of social unrest has become common practice among protestors around the world, from Cairo, Egypt to Ferguson, USA. Smart phones and social media have become indispensable tools to demonstrators as they organize, communicate, express dissent, and document any police brutality aimed at them. This chapter discusses the function of mobile communication technology as tool of sousveillance through an analysis of camera phones and the user-generated images in the mid-to-late 2000s. It argues that camera phones facilitated lateral surveillance and sousveillance practices, enabling ordinary individuals to watch social peers or those in power positions, albeit in non-systematic, non-continuous and spontaneous ways.


Social media platforms enable access to large image sets for research, but there are few if any non-theoretical approaches to image analysis, categorization, and coding. Based on two image sets labeled by the #snack hashtag (on Instagram), a systematic and open inductive approach to identifying conceptual image categories was developed, and unique research questions designed. By systematically categorizing imagery in a bottom-up way, researchers may (1) describe and assess the image set contents and categorize them in multiple ways independent of a theoretical framework (and its potential biasing effects); (2) conceptualize what may be knowable from the image set by the defining of research questions that may be addressed in the empirical data; (3) categorize the available imagery broadly and in multiple ways as a precursor step to further exploration (e.g., research design, image coding, and development of a research codebook). This work informs the exploration and analysis of mobile-created contents for open learning.


Author(s):  
Shalin Hai-Jew

One degree out from an image “selfie” are text-based self-generated user profiles (self-portrayals) on social media platforms; these are self-depictions of the individual as he or she represents to the world. This work-based self-representation must be sufficiently convincing of professionalism and ethics to encourage other professionals to collaborate on shared work projects through co-creation, support, attention, or other work. While project-based track records may carry the force of fact, there are often more subtle messages that have high impact on distant collaborations. One such important dimension is “indirect reciprocity,” or whether the target individual treats collaborators with respect and care and returns altruistic acts with their own acts of altruism. This work describes some analyses of professional profiles on social media platforms (email, social networking, and microblogging) for indicators of indirect reciprocity.


Author(s):  
Şükrü Oktay Kılıç ◽  
Zeynep Genel

A handful of social media companies, with their shifting strategies to become hosts of all information available online, have significantly changed the news media landscape in recent years. Many news media companies across the world have gone through reorganizations in a bid to keep up with new storytelling techniques, technologies, and tools introduced by social media companies. With their non-transparent algorithms favoring particular content formats and lack of interest in developing solid business models for publishers, social media platforms, on the other hand, have attracted widespread criticism by many academics and media practitioners. This chapter aims at discussing the impact of social media on journalism with the help of digital research that provides an insight on what storytelling types with which three most-followed news outlets in Turkey gain the most engagement on Facebook.


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