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Selected average weights and thresholds of the proposed TriLex approach.

Selected average weights and thresholds of the proposed TriLex approach.

<p>Selected average weights and thresholds of the proposed TriLex approach.</p>

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Bibliographic Details
Main Author: Abdulrahman Alharbi (21144277) (author)
Other Authors: Rafaa Aljurbua (15237889) (author), Shelly Gupta (10527488) (author), Zoran Obradovic (834966) (author)
Published: 2025
Subjects:
Genetics
Mental Health
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
short texts poses
online customer reviews
apply weighted averaging
2 %&# 8211
novel unsupervised approach
generally short nature
dynamic threshold derived
improve sentiment labeling
weak label based
social media platforms
paper proposes trilex
unsupervised sentiment analysis
dynamic nature
sentiment analysis
weak labels
new label
fusion approach
sentiment prediction
sentiment expression
xlink ">
wide range
user sentiments
textual content
strong labels
results demonstrate
recent years
multiple lexicon
majority votes
majority vote
lstm models
logistic regression
labeled data
f1 score
existing fusion
efficiency issue
daily lives
context limitations
challenge due
benchmark datasets
8 %.
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