Several authors have developed relation extraction methods for automatically learning or refining taxonomies from large text corpora such as the Web. However, without appropriate post-processing, such taxonomies are often inconsistent (e.g. they contain cycles). A standard approach to repairing such inconsistencies is to identify a minimally consistent subset of the extracted facts. For example, we could aim to minimize the sum of the confidence weights of the facts that are removed for restoring consistency. In this paper, we present MAP inference as a base method for this approach, and analyze how it can be improved by taking into account dependencies between the extracted facts. These dependencies correspond to rules of thumb such as “if...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Maximum a-posteriori (MAP) query in statistical relational models computes the most probable world g...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Several authors have developed relation extraction methods for automatically learning or refining ta...
Abstract. The spread and abundance of electronic documents requires automatic techniques for extract...
DBpedia releases consist of more than 70 multilingual datasets that cover data extracted from differ...
Knowledge base(KB) plays an important role in artificial intelligence. Much effort has been taken to...
The spread and abundance of electronic documents requires automatic techniques for extracting useful...
International audienceIn this paper, we investigate a principled approach for defining and discoveri...
International audienceIn this paper, we investigate a principled approach for defining and discoveri...
International audienceCorrecting errors in a data set is a critical issue. This task can be either h...
Abstract. The Web of Data is a rich common resource with billions of triples available in thousands ...
Populating Knowledge Base (KB) with new knowledge facts from reliable text resources usually consist...
Lifted inference algorithms for probabilistic first-order logic frameworks such as Markov logic netw...
National audienceIn this paper, we investigate a principled approach for de?ning and discovering pro...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Maximum a-posteriori (MAP) query in statistical relational models computes the most probable world g...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Several authors have developed relation extraction methods for automatically learning or refining ta...
Abstract. The spread and abundance of electronic documents requires automatic techniques for extract...
DBpedia releases consist of more than 70 multilingual datasets that cover data extracted from differ...
Knowledge base(KB) plays an important role in artificial intelligence. Much effort has been taken to...
The spread and abundance of electronic documents requires automatic techniques for extracting useful...
International audienceIn this paper, we investigate a principled approach for defining and discoveri...
International audienceIn this paper, we investigate a principled approach for defining and discoveri...
International audienceCorrecting errors in a data set is a critical issue. This task can be either h...
Abstract. The Web of Data is a rich common resource with billions of triples available in thousands ...
Populating Knowledge Base (KB) with new knowledge facts from reliable text resources usually consist...
Lifted inference algorithms for probabilistic first-order logic frameworks such as Markov logic netw...
National audienceIn this paper, we investigate a principled approach for de?ning and discovering pro...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...
Maximum a-posteriori (MAP) query in statistical relational models computes the most probable world g...
We propose an approach for semantifying web extracted facts. In particular, we map subject and objec...