Analysis of Lexical Signatures for Finding Lost or Related Documents. Rattenbury, T., Good, N., & Naaman, M. In pages 103-110.
doi  abstract   bibtex   
We describe an approach for extracting semantics of tags, unstructured text-labels assigned to resources on the Web, based on each tag's usage patterns. In particular, we focus on the problem of extracting place and event semantics for tags that are assigned to photos on Flickr, a popular photo sharing website that supports time and location (latitude/longitude) metadata. We analyze two methods inspired by well-known burst-analysis techniques and one novel method: Scale-structure Identification. We evaluate the methods on a subset of Flickr data, and show that our Scale-structure Identification method outperforms the existing techniques. The approach and methods described in this work can be used in other domains such as geo-annotated web pages, where text terms can be extracted and associated with usage patterns.
@inproceedings{ rat07,
  crossref = {sigir07},
  author = {Tye Rattenbury and Nathaniel Good and Mor Naaman},
  title = {Analysis of Lexical Signatures for Finding Lost or Related Documents},
  pages = {103-110},
  doi = {10.1145/1277741.1277762},
  uri = {http://infolab.stanford.edu/~mor/research/sigir2007rattenburyTagSemantics.pdf},
  abstract = {We describe an approach for extracting semantics of tags, unstructured text-labels assigned to resources on the Web, based on each tag's usage patterns. In particular, we focus on the problem of extracting place and event semantics for tags that are assigned to photos on Flickr, a popular photo sharing website that supports time and location (latitude/longitude) metadata. We analyze two methods inspired by well-known burst-analysis techniques and one novel method: Scale-structure Identification. We evaluate the methods on a subset of Flickr data, and show that our Scale-structure Identification method outperforms the existing techniques. The approach and methods described in this work can be used in other domains such as geo-annotated web pages, where text terms can be extracted and associated with usage patterns.}
}

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