Emotion Recognition from Microblog Managing Emoticon with Text and
Classifying using 1D CNN
- URL: http://arxiv.org/abs/2301.02971v1
- Date: Sun, 8 Jan 2023 04:04:44 GMT
- Title: Emotion Recognition from Microblog Managing Emoticon with Text and
Classifying using 1D CNN
- Authors: Md. Ahsan Habib, M. A. H. Akhand and Md. Abdus Samad Kamal
- Abstract summary: This study proposes an emotion recognition scheme considering both the texts and emoticons from microblog data.
Emoticons are considered unique expressions of the users' emotions and can be changed by the proper emotional words.
The experimental result shows that the proposed emotion recognition scheme outperforms the other existing methods while tested on Twitter data.
- Score: 2.8961929092154692
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Microblog, an online-based broadcast medium, is a widely used forum for
people to share their thoughts and opinions. Recently, Emotion Recognition (ER)
from microblogs is an inspiring research topic in diverse areas. In the machine
learning domain, automatic emotion recognition from microblogs is a challenging
task, especially, for better outcomes considering diverse content. Emoticon
becomes very common in the text of microblogs as it reinforces the meaning of
content. This study proposes an emotion recognition scheme considering both the
texts and emoticons from microblog data. Emoticons are considered unique
expressions of the users' emotions and can be changed by the proper emotional
words. The succession of emoticons appearing in the microblog data is preserved
and a 1D Convolutional Neural Network (CNN) is employed for emotion
classification. The experimental result shows that the proposed emotion
recognition scheme outperforms the other existing methods while tested on
Twitter data.
Related papers
- emotion2vec: Self-Supervised Pre-Training for Speech Emotion
Representation [42.29118614670941]
We propose emotion2vec, a universal speech emotion representation model.
emotion2vec is pre-trained on unlabeled emotion data through self-supervised online distillation.
It outperforms state-of-the-art pre-trained universal models and emotion specialist models.
arXiv Detail & Related papers (2023-12-23T07:46:55Z) - Why Do You Feel This Way? Summarizing Triggers of Emotions in Social
Media Posts [61.723046082145416]
We introduce CovidET (Emotions and their Triggers during Covid-19), a dataset of 1,900 English Reddit posts related to COVID-19.
We develop strong baselines to jointly detect emotions and summarize emotion triggers.
Our analyses show that CovidET presents new challenges in emotion-specific summarization, as well as multi-emotion detection in long social media posts.
arXiv Detail & Related papers (2022-10-22T19:10:26Z) - Speech Synthesis with Mixed Emotions [77.05097999561298]
We propose a novel formulation that measures the relative difference between the speech samples of different emotions.
We then incorporate our formulation into a sequence-to-sequence emotional text-to-speech framework.
At run-time, we control the model to produce the desired emotion mixture by manually defining an emotion attribute vector.
arXiv Detail & Related papers (2022-08-11T15:45:58Z) - MAFW: A Large-scale, Multi-modal, Compound Affective Database for
Dynamic Facial Expression Recognition in the Wild [56.61912265155151]
We propose MAFW, a large-scale compound affective database with 10,045 video-audio clips in the wild.
Each clip is annotated with a compound emotional category and a couple of sentences that describe the subjects' affective behaviors in the clip.
For the compound emotion annotation, each clip is categorized into one or more of the 11 widely-used emotions, i.e., anger, disgust, fear, happiness, neutral, sadness, surprise, contempt, anxiety, helplessness, and disappointment.
arXiv Detail & Related papers (2022-08-01T13:34:33Z) - Emotion Intensity and its Control for Emotional Voice Conversion [77.05097999561298]
Emotional voice conversion (EVC) seeks to convert the emotional state of an utterance while preserving the linguistic content and speaker identity.
In this paper, we aim to explicitly characterize and control the intensity of emotion.
We propose to disentangle the speaker style from linguistic content and encode the speaker style into a style embedding in a continuous space that forms the prototype of emotion embedding.
arXiv Detail & Related papers (2022-01-10T02:11:25Z) - Emoji-based Co-attention Network for Microblog Sentiment Analysis [10.135289472491655]
We propose an emoji-based co-attention network that learns the mutual emotional semantics between text and emojis on microblogs.
Our model adopts the co-attention mechanism based on bidirectional long short-term memory incorporating the text and emojis, and integrates a squeeze-and-excitation block in a convolutional neural network to increase its sensitivity to emotional semantic features.
arXiv Detail & Related papers (2021-10-27T07:23:18Z) - Uncovering the Limits of Text-based Emotion Detection [0.0]
We consider the two largest corpora for emotion classification: GoEmotions, with 58k messages labelled by readers, and Vent, with 33M writer-labelled messages.
We design a benchmark and evaluate several feature spaces and learning algorithms, including two simple yet novel models on top of BERT.
arXiv Detail & Related papers (2021-09-04T16:40:06Z) - Emotion Recognition from Multiple Modalities: Fundamentals and
Methodologies [106.62835060095532]
We discuss several key aspects of multi-modal emotion recognition (MER)
We begin with a brief introduction on widely used emotion representation models and affective modalities.
We then summarize existing emotion annotation strategies and corresponding computational tasks.
Finally, we outline several real-world applications and discuss some future directions.
arXiv Detail & Related papers (2021-08-18T21:55:20Z) - A Circular-Structured Representation for Visual Emotion Distribution
Learning [82.89776298753661]
We propose a well-grounded circular-structured representation to utilize the prior knowledge for visual emotion distribution learning.
To be specific, we first construct an Emotion Circle to unify any emotional state within it.
On the proposed Emotion Circle, each emotion distribution is represented with an emotion vector, which is defined with three attributes.
arXiv Detail & Related papers (2021-06-23T14:53:27Z) - Emotion Correlation Mining Through Deep Learning Models on Natural
Language Text [3.23176099204268]
We try to fill the gap between emotion recognition and emotion correlation mining through natural language text from web news.
To mine emotion correlation from emotion recognition through text, three kinds of features and two deep neural network models are presented.
arXiv Detail & Related papers (2020-07-28T08:59:16Z) - PO-EMO: Conceptualization, Annotation, and Modeling of Aesthetic
Emotions in German and English Poetry [26.172030802168752]
We consider emotions in poetry as they are elicited in the reader, rather than what is expressed in the text or intended by the author.
We conceptualize a set of aesthetic emotions that are predictive of aesthetic appreciation in the reader, and allow the annotation of multiple labels per line to capture mixed emotions within their context.
arXiv Detail & Related papers (2020-03-17T13:54:48Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.