Challenge: despite of the research done in this area there is still no agreement on this issue.
Approach: a paper compares the amount of context used in a model and performance of a time-continuous labelled spontaneous interaction.
Outcome: a new study shows that the amount of context used in a model and performance is similar across models . the results show that knowledge about an appropriate context can reduce complexity and flexibility .

Similar Papers

Self-adaptive Context and Modal-interaction Modeling For Multimodal Emotion Recognition (2023.findings-acl)

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Challenge: Existing methods to predict emotion label for a given utterance lack modeling of diverse dependency ranges and inconsistent treatment of contribution for various modalities.
Approach: They propose a multimodal emotion recognition in conversation task that uses context and multiple modalities to predict emotion label for a given utterance.
Outcome: The proposed method outperforms the state-of-the-art methods on three multimodal datasets.
CARER: Contextualized Affect Representations for Emotion Recognition (D18-1)

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Challenge: Existing methods to model emotion-relevant content are based on rule-based and statistics-based approaches.
Approach: They propose a semi-supervised graph-based algorithm to produce rich structural descriptors . they use word embeddings to evaluate the algorithm on emotion recognition tasks .
Outcome: The proposed method outperforms state-of-the-art methods on emotion recognition tasks.
Exploring Contextualized Neural Language Models for Temporal Dependency Parsing (2020.emnlp-main)

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Challenge: Recent work shows that deep contextualized language models (LMs) can extract temporal relations between events and time expressions.
Approach: They propose a temporal relation extraction technique which extracts temporal relations between events and time expressions.
Outcome: The proposed method significantly improves temporal dependency parsing, the authors show . their work compares the proposed method to other methods and shows where they may fail .
Beyond Sentence-level Labels: Integrating Conversational Context and Personal Experience for Natural Emotional Expression (2026.findings-acl)

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Challenge: Existing systems rely on sentence-level labels, which fails to capture the subtle nuances of human affect.
Approach: They propose to use a large-scale, context-aware speech corpus derived from multi-speaker audiobooks to generate a speech that is human-like.
Outcome: The proposed model outperforms existing methods in terms of emotional expression accuracy and naturalness.
Analyzing Key Factors Influencing Emotion Prediction Performance of VLLMs in Conversational Contexts (2024.emnlp-main)

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Challenge: Recent studies show that large language models and vision large language model (VLLMs) possess EI and the ability to understand emotional stimuli in the form of text and images.
Approach: They analyze the key elements affecting the emotion prediction performance of VLLMs in conversational contexts.
Outcome: The proposed model performance was compared with other models in a conversational context.
Multi-modal Multi-label Emotion Detection with Modality and Label Dependence (2020.emnlp-main)

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Challenge: Existing studies on multi-label emotion detection focus on one modality . current studies focus on label dependence, but there is no consensus on the model .
Approach: They propose a multi-modal sequence-to-set approach to model label dependence and modality dependence in a multiple-modal scenario.
Outcome: The proposed approach is able to model the label dependence and the modality dependence in a multi-modal scenario.
You Are What You Train: Effects of Data Composition on Training Context-aware Machine Translation Models (2025.emnlp-main)

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Challenge: Using sparse contextually rich examples, we demonstrate a strong association between training data sparsity and model performance.
Approach: They propose two training strategies to leverage contextually rich examples in training data . they demonstrate strong association between sparsity and model performance .
Outcome: The proposed training strategies improve translation accuracy by 6 and 8 percentage points on the ctxPro evaluation.
An Emotional Mess! Deciding on a Framework for Building a Dutch Emotion-Annotated Corpus (2020.lrec-1)

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Challenge: Existing frameworks for emotion recognition are limited and do not allow for categorical versus dimensional oppositions.
Approach: They propose to use the emotions joy, love, anger, sadness and fear as well as dimensional models to annotate texts from different domains and topics.
Outcome: The proposed frameworks are well-suited to annotate texts from different domains and topics, but the connotation of the labels strongly depends on the origin of the texts.
Rethinking Long Context Generation from the Continual Learning Perspective (2025.coling-main)

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Challenge: Large Language Models (LLMs) struggle with processing long contexts due to the limited context window.
Approach: They propose to combine a limited context window with a continual learning perspective to improve LLMs' efficiency in processing long contexts.
Outcome: The proposed models improve the performance of Large Language Models (LLMs) by integrating learning strategies with existing approaches.
EmoProgress: Cumulated Emotion Progression Analysis in Dreams and Customer Service Dialogues (2024.lrec-main)

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Challenge: Emotion analysis often involves categorization of isolated textual units, but these are parts of longer discourses, like dialogues or stories.
Approach: They propose a novel annotation setup for emotion categorization corpora that allows to annotate the emotion up to the annotated sentence.
Outcome: The proposed annotation setup allows to answer the question which emotion is presumably experienced at a specific moment in time.

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