iscovering who works with whom, on which projects and with which customers is a key task in knowledge management. Although most organizations keep models of organizational structures, these models do not necessarily accurately reflect the reality on the ground. In this paper we present a text mining method called CORDER which first recognizes named entities (NEs) of various types from Web pages, and then discovers relations from a target NE to other NEs which co-occur with it. We evaluated the method on our departmental Website. We used the CORDER method to first find related NEs of four types (organizations, people, projects, and research areas) from Web pages on the Website and then rank them according to their co-occurrence with each of ...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
One of the core aims of semantic search is to directly present users with information instead of lis...
We present a text mining method called CORDER [4] which discovers social networks from an organizati...
In current organizations, valuable enterprise knowledge is often buried under rapidly expanding huge...
This paper describes a technique for automatically discovering associations between people and exper...
We present CORDER (COmmunity Relation Discovery by named Entity Recognition) an un-supervised machin...
In current organizations, valuable enterprise knowledge is often buried under rapidly expanding huge...
With popularization of Web, there are billions of pages on Web, which contain affluent information o...
With popularization of Web, there are billions of pages on Web, which contain affluent information o...
We present CORDER (COmmunity Relation Discovery by named Entity Recognition) an un-supervised machin...
Named Entity Recognition (NER) refers to the computational task of identifying real-world entities i...
DoctorAs many entities such as people, locations, and organizations appear every day in multilingual...
Our goal in participating in the TREC 2009 Entity Track was to study whether relation extraction te...
PACLIC 21 / Seoul National University, Seoul, Korea / November 1-3, 2007conference pape
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
One of the core aims of semantic search is to directly present users with information instead of lis...
We present a text mining method called CORDER [4] which discovers social networks from an organizati...
In current organizations, valuable enterprise knowledge is often buried under rapidly expanding huge...
This paper describes a technique for automatically discovering associations between people and exper...
We present CORDER (COmmunity Relation Discovery by named Entity Recognition) an un-supervised machin...
In current organizations, valuable enterprise knowledge is often buried under rapidly expanding huge...
With popularization of Web, there are billions of pages on Web, which contain affluent information o...
With popularization of Web, there are billions of pages on Web, which contain affluent information o...
We present CORDER (COmmunity Relation Discovery by named Entity Recognition) an un-supervised machin...
Named Entity Recognition (NER) refers to the computational task of identifying real-world entities i...
DoctorAs many entities such as people, locations, and organizations appear every day in multilingual...
Our goal in participating in the TREC 2009 Entity Track was to study whether relation extraction te...
PACLIC 21 / Seoul National University, Seoul, Korea / November 1-3, 2007conference pape
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
One of the core aims of semantic search is to directly present users with information instead of lis...