Media monitoring services allow their customers, mostly companies, to receive, on a daily basis, a list of documents from mass media that discuss topics relevant to the company. However, media monitoring services often generate these lists by using keyword-filtering techniques, which introduce many false positives. Hence, before the end users, i.e., the employees of the company, may consult these lists and find relevant documents, a human editor must inspect the keyword-filtered documents and remove the false positives. This is a time consuming job. In this paper we present a recommender system that aims at reducing the number of documents that the editor needs to inspect every day. The proposed solution classifies documents (represented wi...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
With the booming development of information technology, text information is not only remained in pap...
With the booming development of information technology, text information is not only remained in pap...
With the booming development of information technology, text information is not only remained in pap...
In this paper we summarize our experiments with a rule-based classi-fier as a recommender within CLE...
In this paper we summarize our experiments with a rule-based classi-fier as a recommender within CLE...
International audienceNews media is in a digital transformation, disrupting their existing business ...
International audienceNews media is in a digital transformation, disrupting their existing business ...
As the usage of internet is increasing, we are getting more dependent on it in our daily life. The I...
The overload of textual information is an ever-growing problem to be addressed by modern information...
In recent years, the automation and optimization of content personalisation has become widespread in...
The news landscape has changed during recent years because of the digitization. News can nowadays be...
The news landscape has changed during recent years because of the digitization. News can nowadays be...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
With the booming development of information technology, text information is not only remained in pap...
With the booming development of information technology, text information is not only remained in pap...
With the booming development of information technology, text information is not only remained in pap...
In this paper we summarize our experiments with a rule-based classi-fier as a recommender within CLE...
In this paper we summarize our experiments with a rule-based classi-fier as a recommender within CLE...
International audienceNews media is in a digital transformation, disrupting their existing business ...
International audienceNews media is in a digital transformation, disrupting their existing business ...
As the usage of internet is increasing, we are getting more dependent on it in our daily life. The I...
The overload of textual information is an ever-growing problem to be addressed by modern information...
In recent years, the automation and optimization of content personalisation has become widespread in...
The news landscape has changed during recent years because of the digitization. News can nowadays be...
The news landscape has changed during recent years because of the digitization. News can nowadays be...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...
Most of the traditional recommendation algorithms are based on TF-IDF, a term-based weighting method...
When recommending news items, most of the traditional algorithms are based on TF-IDF, i.e., a term-b...