When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-based weighting method which is mostly used in information retrieval and text mining. However, many new technologies have been made available since the introduction of TF-IDF. This paper proposes a new method for recommending news items based on TF-IDF and a domain ontology. It is demonstrated that adapting TF-IDF with the semantics of a domain ontology, resulting in Concept Frequency - Inverse Document Frequency (CF-IDF), yields better results than using the original TF-IDF method. CF-IDF is built and tested in Athena, a recommender extension to the Hermes news personalization framework. Athena employs a user pro??le to store concepts or term...
As the usage of internet is increasing, we are getting more dependent on it in our daily life. The I...
Traditionally, content-based news recommendation is performed by means of the cosine similarity and ...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
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...
Traditionally, content-based recommendation is performed using term occurrences, which are leveraged...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
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...
News items play an increasingly important role in the current business decision processes. Due to th...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Content-based news recommendations are usually made by employing the cosine similarity and the TF-ID...
News item recommendation is commonly performed using the TF-IDF weighting technique in combination w...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-540-70987-9_34Pro...
As the usage of internet is increasing, we are getting more dependent on it in our daily life. The I...
Traditionally, content-based news recommendation is performed by means of the cosine similarity and ...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
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...
Traditionally, content-based recommendation is performed using term occurrences, which are leveraged...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
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...
News items play an increasingly important role in the current business decision processes. Due to th...
AbstractTo deal with the challenge of information overload, in this paper, we propose a financial ne...
Content-based news recommendations are usually made by employing the cosine similarity and the TF-ID...
News item recommendation is commonly performed using the TF-IDF weighting technique in combination w...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-540-70987-9_34Pro...
As the usage of internet is increasing, we are getting more dependent on it in our daily life. The I...
Traditionally, content-based news recommendation is performed by means of the cosine similarity and ...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...