Knowing what is increasing in popularity is important to researchers, news organizations, auditors, government entities and more. In particular, knowledge of trending topics provides us with information about what people are attracted to and what they think is noteworthy. Yet detecting trending topics from a set of texts is a difficult task, requiring detectors to learn trending patterns while simultaneously making predictions. In this paper, we propose a deep learning model architecture for the challenging task of trend detection and forecasting. The model architecture aims to learn and attend to the trending values' patterns. Our preliminary results show that our model detects the trending topics with a high accuracy.This is the author'...
Trend prediction has become an extremely popular practice in many industrial sectors and academia. I...
Topic Modeling is a well-known unsupervised learning technique used when dealing with text data. It ...
We address the problem of Topic Detection and Tracking (TDT) and subsequently detecting trends from...
Effective forecasting of future prevalent topics plays an important role in social network business ...
The rapid development of online social media sites is accompanied by the generation of tremendous we...
Among the vast information available on the web, social me-dia streams capture what people currently...
Determination and early detection of emerging trends can be retrieved from numeric data as well as f...
Purpose: We propose and apply a simplified nowcasting model to understand the correlations between s...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...
Today’s online social networking services generates series of conversation that shows the all kinds ...
This paper investigates if and to what point it is possible to trade on news sentiment and if Deep ...
Artículo de publicación ISIThis paper introduces a framework for trend modeling and detection on the...
Thesis: S.M. in Transportation, Massachusetts Institute of Technology, Department of Civil and Envir...
In this paper, we focus on the popularity prediction for marketer-generated content (MGC), which has...
Trends are those keywords, phrases, or names that are mentioned most often on social media or in new...
Trend prediction has become an extremely popular practice in many industrial sectors and academia. I...
Topic Modeling is a well-known unsupervised learning technique used when dealing with text data. It ...
We address the problem of Topic Detection and Tracking (TDT) and subsequently detecting trends from...
Effective forecasting of future prevalent topics plays an important role in social network business ...
The rapid development of online social media sites is accompanied by the generation of tremendous we...
Among the vast information available on the web, social me-dia streams capture what people currently...
Determination and early detection of emerging trends can be retrieved from numeric data as well as f...
Purpose: We propose and apply a simplified nowcasting model to understand the correlations between s...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...
Today’s online social networking services generates series of conversation that shows the all kinds ...
This paper investigates if and to what point it is possible to trade on news sentiment and if Deep ...
Artículo de publicación ISIThis paper introduces a framework for trend modeling and detection on the...
Thesis: S.M. in Transportation, Massachusetts Institute of Technology, Department of Civil and Envir...
In this paper, we focus on the popularity prediction for marketer-generated content (MGC), which has...
Trends are those keywords, phrases, or names that are mentioned most often on social media or in new...
Trend prediction has become an extremely popular practice in many industrial sectors and academia. I...
Topic Modeling is a well-known unsupervised learning technique used when dealing with text data. It ...
We address the problem of Topic Detection and Tracking (TDT) and subsequently detecting trends from...