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  • × type_ss:"el"
  • × theme_ss:"Information"
  1. Crane, G.; Jones, A.: Text, information, knowledge and the evolving record of humanity (2006) 0.03
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    Abstract
    Consider a sentence such as "the current price of tea in China is 35 cents per pound." In a library with millions of books we might find many statements of the above form that we could capture today with relatively simple rules: rather than pursuing every variation of a statement, programs can wait, like predators at a water hole, for their informational prey to reappear in a standard linguistic pattern. We can make inferences from sentences such as "NAME1 born at NAME2 in DATE" that NAME more likely than not represents a person and NAME a place and then convert the statement into a proposition about a person born at a given place and time. The changing price of tea in China, pedestrian birth and death dates, or other basic statements may not be truth and beauty in the Phaedrus, but a digital library that could plot the prices of various commodities in different markets over time, plot the various lifetimes of individuals, or extract and classify many events would be very useful. Services such as the Syllabus Finder1 and H-Bot2 (which Dan Cohen describes elsewhere in this issue of D-Lib) represent examples of information extraction already in use. H-Bot, in particular, builds on our evolving ability to extract information from very large corpora such as the billions of web pages available through the Google API. Aside from identifying higher order statements, however, users also want to search and browse named entities: they want to read about "C. P. E. Bach" rather than his father "Johann Sebastian" or about "Cambridge, Maryland", without hearing about "Cambridge, Massachusetts", Cambridge in the UK or any of the other Cambridges scattered around the world. Named entity identification is a well-established area with an ongoing literature. The Natural Language Processing Research Group at the University of Sheffield has developed its open source Generalized Architecture for Text Engineering (GATE) for years, while IBM's Unstructured Information Analysis and Search (UIMA) is "available as open source software to provide a common foundation for industry and academia." Powerful tools are thus freely available and more demanding users can draw upon published literature to develop their own systems. Major search engines such as Google and Yahoo also integrate increasingly sophisticated tools to categorize and identify places. The software resources are rich and expanding. The reference works on which these systems depend, however, are ill-suited for historical analysis. First, simple gazetteers and similar authority lists quickly grow too big for useful information extraction. They provide us with potential entities against which to match textual references, but existing electronic reference works assume that human readers can use their knowledge of geography and of the immediate context to pick the right Boston from the Bostons in the Getty Thesaurus of Geographic Names (TGN), but, with the crucial exception of geographic location, the TGN records do not provide any machine readable clues: we cannot tell which Bostons are large or small. If we are analyzing a document published in 1818, we cannot filter out those places that did not yet exist or that had different names: "Jefferson Davis" is not the name of a parish in Louisiana (tgn,2000880) or a county in Mississippi (tgn,2001118) until after the Civil War.
  2. Freyberg, L.: ¬Die Lesbarkeit der Welt : Rezension zu 'The Concept of Information in Library and Information Science. A Field in Search of Its Boundaries: 8 Short Comments Concerning Information'. In: Cybernetics and Human Knowing. Vol. 22 (2015), 1, 57-80. Kurzartikel von Luciano Floridi, Søren Brier, Torkild Thellefsen, Martin Thellefsen, Bent Sørensen, Birger Hjørland, Brenda Dervin, Ken Herold, Per Hasle und Michael Buckland (2016) 0.03
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  3. Atran, S.; Medin, D.L.; Ross, N.: Evolution and devolution of knowledge : a tale of two biologies (2004) 0.01
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    Date
    23. 1.2022 10:22:18
  4. Allo, P.; Baumgaertner, B.; D'Alfonso, S.; Fresco, N.; Gobbo, F.; Grubaugh, C.; Iliadis, A.; Illari, P.; Kerr, E.; Primiero, G.; Russo, F.; Schulz, C.; Taddeo, M.; Turilli, M.; Vakarelov, O.; Zenil, H.: ¬The philosophy of information : an introduction (2013) 0.01
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    Abstract
    In April 2010, Bill Gates gave a talk at MIT in which he asked: 'are the brightest minds working on the most important problems?' Gates meant improving the lives of the poorest; improving education, health, and nutrition. We could easily add improving peaceful interactions, human rights, environmental conditions, living standards and so on. Philosophy of Information (PI) proponents think that Gates has a point - but this doesn't mean we should all give up philosophy. Philosophy can be part of this project, because philosophy understood as conceptual design forges and refines the new ideas, theories, and perspectives that we need to understand and address these important problems that press us so urgently. Of course, this naturally invites us to wonder which ideas, theories, and perspectives philosophers should be designing now. In our global information society, many crucial challenges are linked to information and communication technologies: the constant search for novel solutions and improvements demands, in turn, changing conceptual resources to understand and cope with them. Rapid technological development now pervades communication, education, work, entertainment, industrial production and business, healthcare, social relations and armed conflicts. There is a rich mine of philosophical work to do on the new concepts created right here, right now.