Saved in:
Bibliographic Details
Main Authors: Serwata, Damian, Nurek, Mateusz, Michalski, Radoslaw
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.22264
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908288415694848
author Serwata, Damian
Nurek, Mateusz
Michalski, Radoslaw
author_facet Serwata, Damian
Nurek, Mateusz
Michalski, Radoslaw
contents Typically, for analysing and modelling social phenomena, networks are a convenient framework that allows for the representation of the interconnectivity of individuals. These networks are often considered transmission structures for processes that happen in society, e.g. diffusion of information, epidemics, and spread of influence. However, constructing a network can be challenging, as one needs to choose its type and parameters accurately. As a result, the outcomes of analysing dynamic processes often heavily depend on whether this step was done correctly. In this work, we advocate that it might be more beneficial to step down from the tedious process of building a network and base it on the level of the interactions instead. By taking this perspective, we can be closer to reality, and from the cognitive perspective, human beings are directly exposed to events, not networks. However, we can also draw a parallel to stream data mining, which brings a valuable apparatus for stream processing. Apart from taking the interaction stream perspective as a typical way in which we should study social phenomena, this work advocates that it is possible to map the concepts embodied in human nature and cognitive processes to the ones that occur in interaction streams. Exploiting this mapping can help reduce the diversity of problems that one can find in data stream processing for machine learning problems. Finally, we demonstrate one of the use cases in which the interaction stream perspective can be applied, namely, the social learning process.
format Preprint
id arxiv_https___arxiv_org_abs_2503_22264
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Perspective on the Ubiquity of Interaction Streams in Human Realm
Serwata, Damian
Nurek, Mateusz
Michalski, Radoslaw
Social and Information Networks
Typically, for analysing and modelling social phenomena, networks are a convenient framework that allows for the representation of the interconnectivity of individuals. These networks are often considered transmission structures for processes that happen in society, e.g. diffusion of information, epidemics, and spread of influence. However, constructing a network can be challenging, as one needs to choose its type and parameters accurately. As a result, the outcomes of analysing dynamic processes often heavily depend on whether this step was done correctly. In this work, we advocate that it might be more beneficial to step down from the tedious process of building a network and base it on the level of the interactions instead. By taking this perspective, we can be closer to reality, and from the cognitive perspective, human beings are directly exposed to events, not networks. However, we can also draw a parallel to stream data mining, which brings a valuable apparatus for stream processing. Apart from taking the interaction stream perspective as a typical way in which we should study social phenomena, this work advocates that it is possible to map the concepts embodied in human nature and cognitive processes to the ones that occur in interaction streams. Exploiting this mapping can help reduce the diversity of problems that one can find in data stream processing for machine learning problems. Finally, we demonstrate one of the use cases in which the interaction stream perspective can be applied, namely, the social learning process.
title A Perspective on the Ubiquity of Interaction Streams in Human Realm
topic Social and Information Networks
url https://arxiv.org/abs/2503.22264