We present the SemEval-2018 Task 1: Affect in Tweets, which includes an array of subtasks on inferring the affectual state of a person from their tweet. For each task, we created labeled data from English, Arabic, and Spanish tweets. The individual tasks are: 1. emotion intensity regression, 2. emotion intensity ordinal classification, 3. valence (sentiment) regression, 4. valence ordinal classification, and 5. emotion classification. Seventy-five teams (about 200 team members) participated in the shared task. We summarize the methods, resources, and tools used by the participating teams, with a focus on the techniques and resources that are particularly useful. We also analyze systems for consistent bias towards a particular race or gender...
Abstract — In this paper, we use machine learning techniques to try to find the best possible soluti...
People\u27s emotions can be gleaned from their text using machine learning techniques to build model...
In this paper, we describe the 2015 iteration of the SemEval shared task on Sentiment Analysis in Tw...
This paper presents an emotion classification system for English tweets, submitted for the SemEval s...
We present the first shared task on detecting the intensity of emotion felt by the speaker of a twee...
The present study describes our submission to SemEval 2018 Task 1: Affect in Tweets. Our Spanish-onl...
In this paper, we propose a regression system to infer the emotion intensity of a tweet. We develop ...
Affective computing is the study and development of devices that can recognize emotions through vari...
The present study describes our submission to SemEval 2018 Task 1: Affect in Tweets. Our Spanish-onl...
AffectiveTweets is a set of programs for analyzing emotion and sentiment of social media messages su...
We present the development and evaluation of a semantic analysis task that lies at the intersection ...
Automated interpretation of human emotion has become increasingly important as human-computer intera...
Summarization: We describe our submission to SemEval2016 Task 4: Sentiment Analysis in Twitter. The ...
This report summarizes the objectives and evaluation of the SemEval 2015 task on the sentiment analy...
This paper examines the task of detecting intensity of emotion from text. We create the first datase...
Abstract — In this paper, we use machine learning techniques to try to find the best possible soluti...
People\u27s emotions can be gleaned from their text using machine learning techniques to build model...
In this paper, we describe the 2015 iteration of the SemEval shared task on Sentiment Analysis in Tw...
This paper presents an emotion classification system for English tweets, submitted for the SemEval s...
We present the first shared task on detecting the intensity of emotion felt by the speaker of a twee...
The present study describes our submission to SemEval 2018 Task 1: Affect in Tweets. Our Spanish-onl...
In this paper, we propose a regression system to infer the emotion intensity of a tweet. We develop ...
Affective computing is the study and development of devices that can recognize emotions through vari...
The present study describes our submission to SemEval 2018 Task 1: Affect in Tweets. Our Spanish-onl...
AffectiveTweets is a set of programs for analyzing emotion and sentiment of social media messages su...
We present the development and evaluation of a semantic analysis task that lies at the intersection ...
Automated interpretation of human emotion has become increasingly important as human-computer intera...
Summarization: We describe our submission to SemEval2016 Task 4: Sentiment Analysis in Twitter. The ...
This report summarizes the objectives and evaluation of the SemEval 2015 task on the sentiment analy...
This paper examines the task of detecting intensity of emotion from text. We create the first datase...
Abstract — In this paper, we use machine learning techniques to try to find the best possible soluti...
People\u27s emotions can be gleaned from their text using machine learning techniques to build model...
In this paper, we describe the 2015 iteration of the SemEval shared task on Sentiment Analysis in Tw...