The utility of data-driven techniques in the end-to-end problem of temporal information extraction is unclear. Recognition of temporal expressions yields readily to machine learning, but normalization seems to call for a rule-based approach. We explore two aspects of the (potential) utility of data-driven methods in the temporal information extraction task. First, we look at whether improving recognition beyond the rule base used by a normalizer has an effect on normalization performance, comparing normalizer performance when fed by several recognition systems. We also perform an error analysis of our normalizer¿s performance to uncover aspects of the normalization task that might be amenable to data-driven techniques
In this paper we describe a system for the recognition and normalization of temporal expressions in ...
Research on information extraction (IE) seeks to distill re-lational tuples from natural language te...
Temporal expressions are important structures in natural language. In order to understand text, temp...
We seek to improve the robustness and portability of temporal information extraction systems by inco...
AbstractThe automatic extraction of temporal information from written texts is pivotal for many Natu...
Temporal information processing of text is a complex information extractiontask in which temporally ...
Temporal Information Processing is a subfield of Natural Language Processing, valuable in many tasks...
Time information plays an important role in the areas of data mining, information retrieval, and nat...
Temporal expressions are words or phrases that describe a point, duration or recurrence in time. Aut...
Knowledge, in practice, is time-variant and many relations are only valid for a certain period of ti...
Abstract. Temporal information extraction is an interesting research area in Natural Language Proces...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
Today, extracting Time Expressions from free text remains a hot topic in Information Retrieval and N...
Research on information extraction (IE) seeks to distill relational tuples from natural language tex...
AbstractTemporal information extraction from clinical narratives is of critical importance to many c...
In this paper we describe a system for the recognition and normalization of temporal expressions in ...
Research on information extraction (IE) seeks to distill re-lational tuples from natural language te...
Temporal expressions are important structures in natural language. In order to understand text, temp...
We seek to improve the robustness and portability of temporal information extraction systems by inco...
AbstractThe automatic extraction of temporal information from written texts is pivotal for many Natu...
Temporal information processing of text is a complex information extractiontask in which temporally ...
Temporal Information Processing is a subfield of Natural Language Processing, valuable in many tasks...
Time information plays an important role in the areas of data mining, information retrieval, and nat...
Temporal expressions are words or phrases that describe a point, duration or recurrence in time. Aut...
Knowledge, in practice, is time-variant and many relations are only valid for a certain period of ti...
Abstract. Temporal information extraction is an interesting research area in Natural Language Proces...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
Today, extracting Time Expressions from free text remains a hot topic in Information Retrieval and N...
Research on information extraction (IE) seeks to distill relational tuples from natural language tex...
AbstractTemporal information extraction from clinical narratives is of critical importance to many c...
In this paper we describe a system for the recognition and normalization of temporal expressions in ...
Research on information extraction (IE) seeks to distill re-lational tuples from natural language te...
Temporal expressions are important structures in natural language. In order to understand text, temp...