<?xml version="1.0" encoding="UTF-8"?><?xml-stylesheet type="text/xsl" href="static/style.xsl"?><OAI-PMH xmlns="http://www.openarchives.org/OAI/2.0/" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.openarchives.org/OAI/2.0/ http://www.openarchives.org/OAI/2.0/OAI-PMH.xsd"><responseDate>2026-04-27T20:15:57Z</responseDate><request verb="GetRecord" identifier="oai:uvadoc.uva.es:10324/75288" metadataPrefix="dim">https://uvadoc.uva.es/oai/request</request><GetRecord><record><header><identifier>oai:uvadoc.uva.es:10324/75288</identifier><datestamp>2025-03-10T20:01:32Z</datestamp><setSpec>com_10324_1191</setSpec><setSpec>com_10324_931</setSpec><setSpec>com_10324_894</setSpec><setSpec>col_10324_1379</setSpec></header><metadata><dim:dim xmlns:dim="http://www.dspace.org/xmlns/dspace/dim" xmlns:doc="http://www.lyncode.com/xoai" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.dspace.org/xmlns/dspace/dim http://www.dspace.org/schema/dim.xsd">
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="fe9385c725979c89" confidence="600" orcid_id="0000-0002-6920-0778">Merayo Álvarez, Noemí</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="56c62328ea7b56a0" confidence="600" orcid_id="">Ayuso Lanchares, Alba</dim:field>
<dim:field mdschema="dc" element="contributor" qualifier="author" authority="94445c671d1c97a3" confidence="600" orcid_id="0000-0001-7020-0604">González Sanguino, Teresa Clara</dim:field>
<dim:field mdschema="dc" element="date" qualifier="accessioned">2025-03-10T12:14:09Z</dim:field>
<dim:field mdschema="dc" element="date" qualifier="available">2025-03-10T12:14:09Z</dim:field>
<dim:field mdschema="dc" element="date" qualifier="issued">2024</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="citation" lang="es">PeerJ Computer Science, 2024, vol. 10, e2251</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="issn" lang="es">2376-5992</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="uri">https://uvadoc.uva.es/handle/10324/75288</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="doi" lang="es">10.7717/peerj-cs.2251</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationfirstpage" lang="es">e2251</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationissue" lang="es">1</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationlastpage" lang="es">26</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationtitle" lang="es">PeerJ Computer Science</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="publicationvolume" lang="es">10</dim:field>
<dim:field mdschema="dc" element="identifier" qualifier="essn" lang="es">2376-5992</dim:field>
<dim:field mdschema="dc" element="description" qualifier="abstract" lang="es">Background: This study aims to examine, through artificial intelligence, specifically&#xd;
machine learning, the emotional impact generated by disclosures about mental&#xd;
health on social media. In contrast to previous research, which primarily focused on&#xd;
identifying psychopathologies, our study investigates the emotional response to&#xd;
mental health-related content on Instagram, particularly content created by&#xd;
influencers/celebrities. This platform, especially favored by the youth, is the stage&#xd;
where these influencers exert significant social impact, and where their analysis holds&#xd;
strong relevance. Analyzing mental health with machine learning techniques on&#xd;
Instagram is unprecedented, as all existing research has primarily focused on Twitter.&#xd;
Methods: This research involves creating a new corpus labelled with responses to&#xd;
mental health posts made by influencers/celebrities on Instagram, categorized by&#xd;
emotions such as love/admiration, anger/contempt/mockery, gratitude,&#xd;
identification/empathy, and sadness. The study is complemented by modelling a set&#xd;
of machine learning algorithms to efficiently detect the emotions arising when faced&#xd;
with these mental health disclosures on Instagram, using the previous corpus.&#xd;
Results: Results have shown that machine learning algorithms can effectively detect&#xd;
such emotional responses. Traditional techniques, such as Random Forest, showed&#xd;
decent performance with low computational loads (around 50%), while deep learning&#xd;
and Bidirectional Encoder Representation from Transformers (BERT) algorithms&#xd;
achieved very good results. In particular, the BERT models reached accuracy levels&#xd;
between 86–90%, and the deep learning model achieved 72% accuracy. These results&#xd;
are satisfactory, considering that predicting emotions, especially in social networks, is&#xd;
challenging due to factors such as the subjectivity of emotion interpretation, the&#xd;
variability of emotions between individuals, and the interpretation of emotions in&#xd;
different cultures and communities.&#xd;
Discussion: This cross-cutting research between mental health and artificial&#xd;
intelligence allows us to understand the emotional impact generated by mental health&#xd;
content on social networks, especially content generated by influential celebrities&#xd;
among young people. The application of machine learning allows us to understand&#xd;
the emotional reactions of society to messages related to mental health, which is &#xd;
highly innovative and socially relevant given the importance of the phenomenon in&#xd;
societies. In fact, the proposed algorithms’ high accuracy (86–90%) in social contexts&#xd;
like mental health, where detecting negative emotions is crucial, presents a promising&#xd;
research avenue. Achieving such levels of accuracy is highly valuable due to the&#xd;
significant implications of false positives or false negatives in this social context.</dim:field>
<dim:field mdschema="dc" element="format" qualifier="mimetype" lang="es">application/pdf</dim:field>
<dim:field mdschema="dc" element="language" qualifier="iso" lang="es">eng</dim:field>
<dim:field mdschema="dc" element="rights" qualifier="accessRights" lang="es">info:eu-repo/semantics/openAccess</dim:field>
<dim:field mdschema="dc" element="rights" qualifier="uri" lang="*">http://creativecommons.org/licenses/by-nc-nd/4.0/</dim:field>
<dim:field mdschema="dc" element="rights" lang="*">Attribution-NonCommercial-NoDerivatives 4.0 Internacional</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification" lang="es">Mental health</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification">Sentiment analysis</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification">Emotions</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification">Machine learning</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification">Social networks</dim:field>
<dim:field mdschema="dc" element="subject" qualifier="classification">Instagram</dim:field>
<dim:field mdschema="dc" element="title" lang="es">Machine learning and natural language processing to assess the emotional impact of influencers’ mental health content on Instagram</dim:field>
<dim:field mdschema="dc" element="type" lang="es">info:eu-repo/semantics/article</dim:field>
<dim:field mdschema="dc" element="type" qualifier="hasVersion" lang="es">info:eu-repo/semantics/publishedVersion</dim:field>
<dim:field mdschema="dc" element="relation" qualifier="publisherversion" lang="es">https://peerj.com/articles/cs-2251/</dim:field>
<dim:field mdschema="dc" element="peerreviewed" lang="es">SI</dim:field>
</dim:dim></metadata></record></GetRecord></OAI-PMH>