Title :
Developing a Dataset for Technology Structure Mining
Author :
QasemiZadeh, Behrang ; Buitelaar, Paul ; Monaghan, Fergal
Author_Institution :
DERI, Nat. Univ. of Ireland, Galway, Ireland
Abstract :
This paper describes steps that have been taken to construct a development dataset for the task of Technology Structure Mining. We have defined the proposed task as the process of mapping a scientific corpus into a labeled digraph named a Technology Structure Graph as described in the paper. The generated graph expresses the domain semantics in terms of interdependencies between pairs of technologies that are named (introduced) in the target scientific corpus. The dataset comprises a set of sentences extracted from the ACL Anthology Corpus. Each sentence is annotated with at least two technologies in the domain of Human Language Technology and the interdependence between them. The annotations - technology mark-up and their interdependencies - are expressed at two layers: lexical and termino-conceptual. Lexical representation of technologies comprises varying lexicalizations of a technology. However, at the termino-conceptual layer all these lexical variations refer to the same concept. We have adopted the same approach for representing Semantic Relations, at the lexical layer a semantic relation is a predicate i.e. defined based on the sentence surface structure, however at the termino-conceptual layer semantic relations are classified into conceptual relations either taxonomic or non-taxonomic. Morover, the contexts that interdependencies are extracted from are classified into five groups based on the linguistic criteria and syntactic structure that are identified by the human annotators. The dataset initially comprises of 482 sentences. We hope this effort results in a benchmark that can be used for the technology structure mining task as defined in the paper.
Keywords :
data mining; directed graphs; natural language processing; text analysis; ACL Anthology Corpus; human annotator; human language technology; labeled digraph; lexical representation; linguistic criteria; scientific corpus mapping; sentence annotation; technology structure graph; technology structure mining; termino-conceptual layer semantic relations; text mining; Data mining; Humans; Natural languages; Ontologies; Semantics; Speech; XML; NLP; Technology Structure Mining; Text Mining;
Conference_Titel :
Semantic Computing (ICSC), 2010 IEEE Fourth International Conference on
Conference_Location :
Pittsburgh, PA
Print_ISBN :
978-1-4244-7912-2
Electronic_ISBN :
978-0-7695-4154-9
DOI :
10.1109/ICSC.2010.73