Improving Cyberbully Detection with User Interaction
- URL: http://arxiv.org/abs/2011.00449v2
- Date: Thu, 11 Feb 2021 03:16:57 GMT
- Title: Improving Cyberbully Detection with User Interaction
- Authors: Suyu Ge, Lu Cheng, Huan Liu
- Abstract summary: We propose a principled graph-based approach for modeling the temporal dynamics and topic coherence throughout user interactions.
We empirically evaluate the effectiveness of our approach with the tasks of session-level bullying detection and comment-level case study.
- Score: 34.956581421295
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cyberbullying, identified as intended and repeated online bullying behavior,
has become increasingly prevalent in the past few decades. Despite the
significant progress made thus far, the focus of most existing work on
cyberbullying detection lies in the independent content analysis of different
comments within a social media session. We argue that such leading notions of
analysis suffer from three key limitations: they overlook the temporal
correlations among different comments; they only consider the content within a
single comment rather than the topic coherence across comments; they remain
generic and exploit limited interactions between social media users. In this
work, we observe that user comments in the same session may be inherently
related, e.g., discussing similar topics, and their interaction may evolve over
time. We also show that modeling such topic coherence and temporal interaction
are critical to capture the repetitive characteristics of bullying behavior,
thus leading to better predicting performance. To achieve the goal, we first
construct a unified temporal graph for each social media session. Drawing on
recent advances in graph neural network, we then propose a principled
graph-based approach for modeling the temporal dynamics and topic coherence
throughout user interactions. We empirically evaluate the effectiveness of our
approach with the tasks of session-level bullying detection and comment-level
case study. Our code is released to public.
Related papers
- Sim-to-Real Causal Transfer: A Metric Learning Approach to
Causally-Aware Interaction Representations [62.48505112245388]
We take an in-depth look at the causal awareness of modern representations of agent interactions.
We show that recent representations are already partially resilient to perturbations of non-causal agents.
We propose a metric learning approach that regularizes latent representations with causal annotations.
arXiv Detail & Related papers (2023-12-07T18:57:03Z) - Decoding the Silent Majority: Inducing Belief Augmented Social Graph
with Large Language Model for Response Forecasting [74.68371461260946]
SocialSense is a framework that induces a belief-centered graph on top of an existent social network, along with graph-based propagation to capture social dynamics.
Our method surpasses existing state-of-the-art in experimental evaluations for both zero-shot and supervised settings.
arXiv Detail & Related papers (2023-10-20T06:17:02Z) - Qualitative Analysis of a Graph Transformer Approach to Addressing Hate
Speech: Adapting to Dynamically Changing Content [8.393770595114763]
We offer a detailed qualitative analysis of this solution for hate speech detection in social networks.
A key insight is that the focus on reasoning about the concept of context positions us well to be able to support multi-modal analysis of online posts.
We conclude with a reflection on how the problem we are addressing relates especially well to the theme of dynamic change.
arXiv Detail & Related papers (2023-01-25T23:32:32Z) - Aggression and "hate speech" in communication of media users: analysis
of control capabilities [50.591267188664666]
Authors studied the possibilities of mutual influence of users in new media.
They found a high level of aggression and hate speech when discussing an urgent social problem - measures for COVID-19 fighting.
Results can be useful for developing media content in a modern digital environment.
arXiv Detail & Related papers (2022-08-25T15:53:32Z) - Co-Located Human-Human Interaction Analysis using Nonverbal Cues: A
Survey [71.43956423427397]
We aim to identify the nonverbal cues and computational methodologies resulting in effective performance.
This survey differs from its counterparts by involving the widest spectrum of social phenomena and interaction settings.
Some major observations are: the most often used nonverbal cue, computational method, interaction environment, and sensing approach are speaking activity, support vector machines, and meetings composed of 3-4 persons equipped with microphones and cameras, respectively.
arXiv Detail & Related papers (2022-07-20T13:37:57Z) - Session-based Cyberbullying Detection in Social Media: A Survey [16.39344929765961]
We define the Session-based Cyberbullying Detection framework that encapsulates the different steps and challenges of the problem.
Our review leads us to propose evidence-based criteria for a set of best practices to create session-based cyberbullying datasets.
arXiv Detail & Related papers (2022-07-14T18:56:54Z) - SSAGCN: Social Soft Attention Graph Convolution Network for Pedestrian
Trajectory Prediction [59.064925464991056]
We propose one new prediction model named Social Soft Attention Graph Convolution Network (SSAGCN)
SSAGCN aims to simultaneously handle social interactions among pedestrians and scene interactions between pedestrians and environments.
Experiments on public available datasets prove the effectiveness of SSAGCN and have achieved state-of-the-art results.
arXiv Detail & Related papers (2021-12-05T01:49:18Z) - Exploring and mining attributed sequences of interactions [0.1933681537640272]
We model interactions as stream graphs, a recent framework to model interactions over time.
We introduce algorithms to enumerate closed patterns on a labeled stream graph, and introduce a way to select relevant closed patterns.
We run experiments on two real-world datasets of interactions among students and citations between authors.
arXiv Detail & Related papers (2021-07-28T12:53:46Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.