Annotation and analysis of online customer reviews were identified as significant problems in various domains, including business intelligence, marketing, and e-governance. In the last decade, various approaches based on topic modeling have been developed to solve this problem. The known solutions, however, often only work well on content with static topics. As a result, it is challenging to analyze customer reviews that include dynamic and constantly expanding collections of short and noisy texts. A method was proposed to handle such dynamic content. The proposed system applied a dynamic topic model using BERTopic to monitor topics and word evolution over time. It would help decide when the topic model needs to be retrained to capture emer...
Abstract Topic models are regularly used to provide directed exploration and a high-level overview o...
Recommending products that are helpful to customers and tailored to their needs is of pivotal import...
Online customer reviews offer valuable information for merchants and potential shoppers in e-Commerc...
Topic modeling is a machine learning technique that identifies latent topics in a text corpus. There...
In this paper we present a novel framework for extracting the ratable aspects of objects from online...
The thesis addresses an important issue in e-commerce area that customers were overwhelmed by huge a...
Part 15: Natural LanguageInternational audienceText mining comprises different techniques capable to...
User generated content in the form of customer reviews, blogs or tweets is an emerging and rich sour...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Online reviews are frequently utilized to determine a product's quality before purchase along with t...
Understanding how topics evolve in text data is an important and challenging task. Although much wor...
A rapid growth of documents available on the Internet, digital libraries, medical documents, news wi...
Analysing product online reviews has drawn much interest in the academic field. In this research, a ...
Topic modeling is an important area which aims at indexing and exploring massive data streams. In th...
Topic models are becoming a frequently employed tool in the empirical methods repertoire of informat...
Abstract Topic models are regularly used to provide directed exploration and a high-level overview o...
Recommending products that are helpful to customers and tailored to their needs is of pivotal import...
Online customer reviews offer valuable information for merchants and potential shoppers in e-Commerc...
Topic modeling is a machine learning technique that identifies latent topics in a text corpus. There...
In this paper we present a novel framework for extracting the ratable aspects of objects from online...
The thesis addresses an important issue in e-commerce area that customers were overwhelmed by huge a...
Part 15: Natural LanguageInternational audienceText mining comprises different techniques capable to...
User generated content in the form of customer reviews, blogs or tweets is an emerging and rich sour...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Online reviews are frequently utilized to determine a product's quality before purchase along with t...
Understanding how topics evolve in text data is an important and challenging task. Although much wor...
A rapid growth of documents available on the Internet, digital libraries, medical documents, news wi...
Analysing product online reviews has drawn much interest in the academic field. In this research, a ...
Topic modeling is an important area which aims at indexing and exploring massive data streams. In th...
Topic models are becoming a frequently employed tool in the empirical methods repertoire of informat...
Abstract Topic models are regularly used to provide directed exploration and a high-level overview o...
Recommending products that are helpful to customers and tailored to their needs is of pivotal import...
Online customer reviews offer valuable information for merchants and potential shoppers in e-Commerc...