Content-based news recommendations are usually made by employing the cosine similarity and the TF-IDF weighting scheme for terms occurring in news messages and user profiles. Recent developments, such as SF-IDF, have elevated news recommendation to a new level of abstraction by additionally taking into account term meaning through the exploitation of synsets from semantic lexicons and the cosine similarity. Other state-of-the-art semantic recommenders, like SS, make use of semantic lexicon-driven similarities. A shortcoming of current semantic recommenders is that they do not take into account the various semantic relationships between synsets, providing only for a limited understanding of news semantics. Therefore, we extend the SF-IDF wei...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Institute for Systems and Technologies of Information, Control and Communication (INSTICC)11th Inter...
Traditionally, content-based news recommendation is performed by means of the cosine similarity and ...
textabstractContent-based news recommendation is traditionally performed using the cosine similarity...
News item recommendation is commonly performed using the TF-IDF weighting technique in combination w...
News items play an increasingly important role in the current business decision processes. Due to th...
Traditionally, content-based recommendation is performed using term occurrences, which are leveraged...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
While traditionally content-based news recommendation was performed using the word vector space mode...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
Part 1: Semantic Concepts and Open DataInternational audienceNews on the Internet today plays an imp...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Institute for Systems and Technologies of Information, Control and Communication (INSTICC)11th Inter...
Traditionally, content-based news recommendation is performed by means of the cosine similarity and ...
textabstractContent-based news recommendation is traditionally performed using the cosine similarity...
News item recommendation is commonly performed using the TF-IDF weighting technique in combination w...
News items play an increasingly important role in the current business decision processes. Due to th...
Traditionally, content-based recommendation is performed using term occurrences, which are leveraged...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
While traditionally content-based news recommendation was performed using the word vector space mode...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
Part 1: Semantic Concepts and Open DataInternational audienceNews on the Internet today plays an imp...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
Recommending news items is traditionally done by term-based algorithms like TF-IDF. This paper conce...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Institute for Systems and Technologies of Information, Control and Communication (INSTICC)11th Inter...