Unstructured metadata fields such as ‘description ’ offer tremendous value for users to understand cultural heritage objects. However, this type of narrative information is of little direct use within a machine-readable context due to its unstructured nature. This paper explores the possibilities and limitations of Named-Entity Recognition (NER) and Term Extraction (TE) to mine such unstructured metadata for meaningful concepts. These concepts can be used to leverage otherwise limited searching and browsing operations, but they can also play an important role to foster Digital Humanities research. In order to catalyze experimentation with NER and TE, the paper proposes an evaluation of the performance of three third-party entity extraction ...
Named Entity Recognition (NER), search, classification and tagging of names and name-like informatio...
Named entity recognition (NER), search, classification and tagging of names and name like frequent i...
In this project we designed and implemented a system based on the Learning To Rank framework to perf...
Unstructured metadata fields such as 'description' offer tremendous value for users to understand cu...
Recognition and identification of real-world entities is at the core of virtually any text mining ap...
After decades of massive digitisation, an unprecedented amount of historical documents is available ...
The entity-oriented description of the world is a major, current trend motivated by the need for sem...
This paper introduces MERCKX, a Multilingual Entity/Resource Combiner & Knowledge eXtractor. A case ...
Advances in Natural Language Processing allow the process of deriving information from large volumes...
Purpose: By mapping-out the capabilities, challenges and limitations of named-entity recognition (NE...
The amount of archaeological literature is growing rapidly. Until recently, these data were only acc...
Most digitised and online available objects from GLAMs (Galleries, Libraries, Archives, Museums) can...
In the past twenty years, the problem space of automatically recognizing, extracting, classifying, a...
In the past twenty years, the problem space of automatically recognizing, extracting, classifying, a...
The most common method of publishing new discoveries about art conservation techniques and research ...
Named Entity Recognition (NER), search, classification and tagging of names and name-like informatio...
Named entity recognition (NER), search, classification and tagging of names and name like frequent i...
In this project we designed and implemented a system based on the Learning To Rank framework to perf...
Unstructured metadata fields such as 'description' offer tremendous value for users to understand cu...
Recognition and identification of real-world entities is at the core of virtually any text mining ap...
After decades of massive digitisation, an unprecedented amount of historical documents is available ...
The entity-oriented description of the world is a major, current trend motivated by the need for sem...
This paper introduces MERCKX, a Multilingual Entity/Resource Combiner & Knowledge eXtractor. A case ...
Advances in Natural Language Processing allow the process of deriving information from large volumes...
Purpose: By mapping-out the capabilities, challenges and limitations of named-entity recognition (NE...
The amount of archaeological literature is growing rapidly. Until recently, these data were only acc...
Most digitised and online available objects from GLAMs (Galleries, Libraries, Archives, Museums) can...
In the past twenty years, the problem space of automatically recognizing, extracting, classifying, a...
In the past twenty years, the problem space of automatically recognizing, extracting, classifying, a...
The most common method of publishing new discoveries about art conservation techniques and research ...
Named Entity Recognition (NER), search, classification and tagging of names and name-like informatio...
Named entity recognition (NER), search, classification and tagging of names and name like frequent i...
In this project we designed and implemented a system based on the Learning To Rank framework to perf...