When LLM Meets Hypergraph: A Sociological Analysis on Personality via Online Social Networks
- URL: http://arxiv.org/abs/2407.03568v1
- Date: Thu, 04 Jul 2024 01:43:52 GMT
- Title: When LLM Meets Hypergraph: A Sociological Analysis on Personality via Online Social Networks
- Authors: Zhiyao Shu, Xiangguo Sun, Hong Cheng,
- Abstract summary: This paper proposes a sociological analysis framework for one's personality in an environment-based view instead of individual-level data mining.
We design an effective hypergraph neural network where the hypergraph nodes are users and the hyperedges in the hypergraph are social environments.
We offer a useful dataset with user profile data, personality traits, and several detected environments from the real-world social platform.
- Score: 7.309233340654514
- License:
- Abstract: Individual personalities significantly influence our perceptions, decisions, and social interactions, which is particularly crucial for gaining insights into human behavior patterns in online social network analysis. Many psychological studies have observed that personalities are strongly reflected in their social behaviors and social environments. In light of these problems, this paper proposes a sociological analysis framework for one's personality in an environment-based view instead of individual-level data mining. Specifically, to comprehensively understand an individual's behavior from low-quality records, we leverage the powerful associative ability of LLMs by designing an effective prompt. In this way, LLMs can integrate various scattered information with their external knowledge to generate higher-quality profiles, which can significantly improve the personality analysis performance. To explore the interactive mechanism behind the users and their online environments, we design an effective hypergraph neural network where the hypergraph nodes are users and the hyperedges in the hypergraph are social environments. We offer a useful dataset with user profile data, personality traits, and several detected environments from the real-world social platform. To the best of our knowledge, this is the first network-based dataset containing both hypergraph structure and social information, which could push forward future research in this area further. By employing the framework on this dataset, we can effectively capture the nuances of individual personalities and their online behaviors, leading to a deeper understanding of human interactions in the digital world.
Related papers
- Characterizing User Archetypes and Discussions on Scored.co [0.6321194486116923]
We present a framework for characterizing nodes and hyperedges in social hypernetworks.
We focus on the understudied alt-right platform Scored.co.
Our findings highlight the importance of higher-order interactions in understanding social dynamics.
arXiv Detail & Related papers (2024-07-31T17:18:25Z) - Quantifying AI Psychology: A Psychometrics Benchmark for Large Language Models [57.518784855080334]
Large Language Models (LLMs) have demonstrated exceptional task-solving capabilities, increasingly adopting roles akin to human-like assistants.
This paper presents a framework for investigating psychology dimension in LLMs, including psychological identification, assessment dataset curation, and assessment with results validation.
We introduce a comprehensive psychometrics benchmark for LLMs that covers six psychological dimensions: personality, values, emotion, theory of mind, motivation, and intelligence.
arXiv Detail & Related papers (2024-06-25T16:09:08Z) - Self-supervised Hypergraph Representation Learning for Sociological
Analysis [52.514283292498405]
We propose a fundamental methodology to support the further fusion of data mining techniques and sociological behavioral criteria.
First, we propose an effective hypergraph awareness and a fast line graph construction framework.
Second, we propose a novel hypergraph-based neural network to learn social influence flowing from users to users.
arXiv Detail & Related papers (2022-12-22T01:20:29Z) - 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) - Exploiting Social Graph Networks for Emotion Prediction [2.7376140293132667]
We utilize mobile sensing data to predict happiness and stress.
In addition to a person's physiological features, we also incorporate the environment's impact through weather and social network.
We propose an architecture that automates the integration of a user's social network affect prediction.
arXiv Detail & Related papers (2022-07-12T20:24:39Z) - The world seems different in a social context: a neural network analysis
of human experimental data [57.729312306803955]
We show that it is possible to replicate human behavioral data in both individual and social task settings by modifying the precision of prior and sensory signals.
An analysis of the neural activation traces of the trained networks provides evidence that information is coded in fundamentally different ways in the network in the individual and in the social conditions.
arXiv Detail & Related papers (2022-03-03T17:19:12Z) - Two-Faced Humans on Twitter and Facebook: Harvesting Social Multimedia
for Human Personality Profiling [74.83957286553924]
We infer the Myers-Briggs Personality Type indicators by applying a novel multi-view fusion framework, called "PERS"
Our experimental results demonstrate the PERS's ability to learn from multi-view data for personality profiling by efficiently leveraging on the significantly different data arriving from diverse social multimedia sources.
arXiv Detail & Related papers (2021-06-20T10:48:49Z) - My tweets bring all the traits to the yard: Predicting personality and
relational traits in Online Social Networks [4.095574580512599]
This study aims to provide a prediction model for a holistic personality profiling in Online Social Networks (OSNs)
We first designed a feature engineering methodology that extracts a wide range of features from OSN accounts of users.
Then, we designed a machine learning model that predicts scores for the psychological traits of the users based on the extracted features.
arXiv Detail & Related papers (2020-09-22T20:30:56Z) - I Know Where You Are Coming From: On the Impact of Social Media Sources
on AI Model Performance [79.05613148641018]
We will study the performance of different machine learning models when being learned on multi-modal data from different social networks.
Our initial experimental results reveal that social network choice impacts the performance.
arXiv Detail & Related papers (2020-02-05T11:10:44Z)
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.