This repository contains the enrichments for the dataset The New York Times Annotated Corpus developed for the paper: “Marco Ponza, Diego Ceccarelli, Paolo Ferragina, Edgar Meij, Sambhav Kothari. Contextualizing Trending Entities in News Stories. In Proceedings of the 14th ACM International Conference on Web Search and Data Mining (WSDM 2021).” It includes a total of 149 trends constituted by 120K entities. The goal is to retrieve a set of entities ranked with respect to their usefulness in explaining why a given trending entity is actually trending. Format The repository contains the enrichments in JSON format. The news stories of the New York Times from which these enrichments have been developed are available from LDC. Data Splits ...
Determination and early detection of emerging trends can be retrieved from numeric data as well as f...
This dataset is part of a larger project on using headlines to predict the social media popularity o...
This data set contains automated sentiment and emotionality annotations of 23 million headlines from...
Trends are those keywords, phrases, or names that are mentioned most often on social media or in new...
A conference paper has published in AAAI-ICWSM 2023 details the method to create the data. Overview...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
This dataset is part of a larger project on using headlines to predict the social media popularity o...
Knowing what is increasing in popularity is important to researchers, news organizations, auditors, ...
Trend information is a summarization of temporal statistical data, such as changes in product prices...
The extraction of significant, relevant, and useful trends from massive document collections, such a...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
This repository contains the data set developed for the paper: “Shruti Rijhwani and Daniel Preoțiuc...
Please cite our paper as follows, when you are using our dataset: @article{varol2017early, Author...
Much information available on the web is copied, reused or rephrased. The phe-nomenon that multiple ...
If you wish to use this data please cite: Katarzyna Baraniak, Marcin Sydow, A dataset for Sentiment...
Determination and early detection of emerging trends can be retrieved from numeric data as well as f...
This dataset is part of a larger project on using headlines to predict the social media popularity o...
This data set contains automated sentiment and emotionality annotations of 23 million headlines from...
Trends are those keywords, phrases, or names that are mentioned most often on social media or in new...
A conference paper has published in AAAI-ICWSM 2023 details the method to create the data. Overview...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
This dataset is part of a larger project on using headlines to predict the social media popularity o...
Knowing what is increasing in popularity is important to researchers, news organizations, auditors, ...
Trend information is a summarization of temporal statistical data, such as changes in product prices...
The extraction of significant, relevant, and useful trends from massive document collections, such a...
This dataset is part of the Monash, UEA & UCR time series regression repository. http://tseregressio...
This repository contains the data set developed for the paper: “Shruti Rijhwani and Daniel Preoțiuc...
Please cite our paper as follows, when you are using our dataset: @article{varol2017early, Author...
Much information available on the web is copied, reused or rephrased. The phe-nomenon that multiple ...
If you wish to use this data please cite: Katarzyna Baraniak, Marcin Sydow, A dataset for Sentiment...
Determination and early detection of emerging trends can be retrieved from numeric data as well as f...
This dataset is part of a larger project on using headlines to predict the social media popularity o...
This data set contains automated sentiment and emotionality annotations of 23 million headlines from...