Challenge: Existing studies on emotion analysis have studied the analysis of basic emotions and sentiment polarity independently.
Approach: They extend the WRIME dataset with basic emotion intensity from both the writer's subjective and reader's perspective to include the Japanese sentiment polarity.
Outcome: The proposed dataset is the first large-scale corpus to annotate both basic emotions and sentiment polarity labels from both the writer’s and reader’s perspectives.

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WRIME: A New Dataset for Emotional Intensity Estimation with Subjective and Objective Annotations (2021.naacl-main)

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Challenge: Existing studies on emotion analysis use subjective emotional intensity labels by the writers and objective ones by the readers.
Approach: They annotate 17,000 SNS posts with both the writer's subjective emotional intensity and the reader's objective emotional intensity to construct a Japanese emotion analysis dataset.
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A Large-Scale Japanese Dataset for Aspect-based Sentiment Analysis (2022.lrec-1)

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Challenge: Aspect-based sentiment analysis (ABSA) has not been explored in the Japanese language . there is no standard Japanese dataset available for ABSA task in the language - a paper by cnn.
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Understanding Emotions: A Dataset of Tweets to Study Interactions between Affect Categories (L18-1)

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Challenge: a new dataset is used to classify text into positive, negative, and neutral classes . a large amount of work on automatic detecting emotions from text has focused on classifying text into basic emotion categories .
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An Analysis of Annotated Corpora for Emotion Classification in Text (C18-1)

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Challenge: Several datasets have been annotated and published for classification of emotions.
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User Guide for KOTE: Korean Online That-gul Emotions Dataset (2024.lrec-main)

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Challenge: sentiment analysis is used to identify emotional aspects of texts but is limited by its small size and limited range of emotions.
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Domain-Specific Sentiment Lexicons Induced from Labeled Documents (2020.coling-main)

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Challenge: Existing sentiment lexicons reflect abstract notion of polarity and do not do justice to substantial differences of word polarities between domains.
Approach: They propose to use domain-specific sentiment lexicons to induce initial word intensity scores and train new deep models based on word vector representations to overcome the scarcity of the seed data.
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Emotional Intensity Estimation based on Writer’s Personality (2022.aacl-srw)

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Challenge: Existing emotion analysis models are difficult to accurately estimate the writer’s subjective emotions behind the text.
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XED: A Multilingual Dataset for Sentiment Analysis and Emotion Detection (2020.coling-main)

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Challenge: XED is a multilingual fine-grained emotion dataset for English and other low-resource languages.
Approach: They propose a multilingual fine-grained emotion dataset using Plutchik's Wheel of Emotions and a projection scheme to annotate Finnish and English sentences.
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Guilt by Association: Emotion Intensities in Lexical Representations (2021.emnlp-main)

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Challenge: linguistic models have a higher correlation with human ground truth ratings than labeled data . word vectors have often been evaluated on standard word relatedness benchmarks .
Approach: They propose to use unsupervised, supervised, and finally supervised methods to extract emotional associations from pretrained vectors and models.
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PO-EMO: Conceptualization, Annotation, and Modeling of Aesthetic Emotions in German and English Poetry (2020.lrec-1)

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Challenge: a new study shows that literature enables engagement in a broader range of complex and subtle emotions.
Approach: They propose to use multiple emotion labels to capture mixed emotions in poetry . they evaluate an annotation experiment with experts and crowdsourcing .
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