Matches in SemOpenAlex for { <https://semopenalex.org/work/W2086383614> ?p ?o ?g. }
- W2086383614 endingPage "7268" @default.
- W2086383614 startingPage "7255" @default.
- W2086383614 abstract "As the Internet has been the virtual place where citizens are united and their opinions are promptly shifted into the action, two way communications between the government sector and the citizen have been more important among activities of e-Government. Hence, Anti-corruption and Civil Rights Commission (ACRC) in the Republic of Korea has constructed the online petition portal system named e-People. In addition, the nation’s Open Innovation through e-People has gained increasing attention. That is because e-People can be applied for the virtual space where citizens participate in improving the national law and policy by simply filing petitions to e-People as the voice of the nation. However, currently there are problems and challenging issues to be solved until e-People can function as the virtual space for the nation’s Open Innovation based on petitions collected from citizens. First, there is no objective and systematic method for analyzing a large number of petitions filed to e-People without a lot of manual works of petition inspectors. Second, e-People is required to forecast the trend of petitions filed to e-People more accurately and quickly than petition inspectors for making a better decision on the national law and policy strategy. Therefore, in this paper, we propose the framework of applying text and data mining techniques not only to analyze a large number of petitions filed to e-People but also to predict the trend of petitions. In detail, we apply text mining techniques to unstructured data of petitions to elicit keywords from petitions and identify groups of petitions with the elicited keywords. Moreover, we apply data mining techniques to structured data of the identified petition groups on purpose to forecast the trend of petitions. Our approach based on applying text and data mining techniques decreases time-consuming manual works on reading and classifying a large number of petitions, and contributes to increasing accuracy in evaluating the trend of petitions. Eventually, it helps petition inspectors to give more attention on detecting and tracking important groups of petitions that possibly grow as nationwide problems. Further, the petitions ordered by their petition groups’ trend values can be used as the baseline for making a better decision on the national law and policy strategy." @default.
- W2086383614 created "2016-06-24" @default.
- W2086383614 creator A5018882989 @default.
- W2086383614 creator A5027517849 @default.
- W2086383614 creator A5080648559 @default.
- W2086383614 date "2010-10-01" @default.
- W2086383614 modified "2023-09-30" @default.
- W2086383614 title "Applying text and data mining techniques to forecasting the trend of petitions filed to e-People" @default.
- W2086383614 cites W1965806369 @default.
- W2086383614 cites W1971785050 @default.
- W2086383614 cites W1974808478 @default.
- W2086383614 cites W1981257123 @default.
- W2086383614 cites W1988192941 @default.
- W2086383614 cites W1993677645 @default.
- W2086383614 cites W1995319408 @default.
- W2086383614 cites W1997754540 @default.
- W2086383614 cites W1999189903 @default.
- W2086383614 cites W1999831322 @default.
- W2086383614 cites W2000163079 @default.
- W2086383614 cites W2005346797 @default.
- W2086383614 cites W2007417077 @default.
- W2086383614 cites W2010551096 @default.
- W2086383614 cites W2012533078 @default.
- W2086383614 cites W2014351296 @default.
- W2086383614 cites W2014797372 @default.
- W2086383614 cites W2021327041 @default.
- W2086383614 cites W2035716223 @default.
- W2086383614 cites W2036452960 @default.
- W2086383614 cites W2036902578 @default.
- W2086383614 cites W2037671496 @default.
- W2086383614 cites W2046878543 @default.
- W2086383614 cites W2058595220 @default.
- W2086383614 cites W2078862361 @default.
- W2086383614 cites W2079402140 @default.
- W2086383614 cites W2080209778 @default.
- W2086383614 cites W2087182900 @default.
- W2086383614 cites W2087752589 @default.
- W2086383614 cites W2106303535 @default.
- W2086383614 cites W2112442192 @default.
- W2086383614 cites W2118020653 @default.
- W2086383614 cites W2118067958 @default.
- W2086383614 cites W2140112671 @default.
- W2086383614 cites W2142149253 @default.
- W2086383614 cites W2142827986 @default.
- W2086383614 cites W2147152072 @default.
- W2086383614 cites W2159387069 @default.
- W2086383614 cites W2165612380 @default.
- W2086383614 cites W327991062 @default.
- W2086383614 cites W4233198660 @default.
- W2086383614 cites W4256417772 @default.
- W2086383614 doi "https://doi.org/10.1016/j.eswa.2010.04.002" @default.
- W2086383614 hasPublicationYear "2010" @default.
- W2086383614 type Work @default.
- W2086383614 sameAs 2086383614 @default.
- W2086383614 citedByCount "34" @default.
- W2086383614 countsByYear W20863836142012 @default.
- W2086383614 countsByYear W20863836142013 @default.
- W2086383614 countsByYear W20863836142014 @default.
- W2086383614 countsByYear W20863836142015 @default.
- W2086383614 countsByYear W20863836142016 @default.
- W2086383614 countsByYear W20863836142017 @default.
- W2086383614 countsByYear W20863836142018 @default.
- W2086383614 countsByYear W20863836142019 @default.
- W2086383614 countsByYear W20863836142020 @default.
- W2086383614 countsByYear W20863836142021 @default.
- W2086383614 countsByYear W20863836142022 @default.
- W2086383614 countsByYear W20863836142023 @default.
- W2086383614 crossrefType "journal-article" @default.
- W2086383614 hasAuthorship W2086383614A5018882989 @default.
- W2086383614 hasAuthorship W2086383614A5027517849 @default.
- W2086383614 hasAuthorship W2086383614A5080648559 @default.
- W2086383614 hasConcept C110875604 @default.
- W2086383614 hasConcept C111919701 @default.
- W2086383614 hasConcept C121332964 @default.
- W2086383614 hasConcept C124952713 @default.
- W2086383614 hasConcept C136764020 @default.
- W2086383614 hasConcept C138885662 @default.
- W2086383614 hasConcept C14036430 @default.
- W2086383614 hasConcept C142362112 @default.
- W2086383614 hasConcept C144133560 @default.
- W2086383614 hasConcept C17744445 @default.
- W2086383614 hasConcept C199539241 @default.
- W2086383614 hasConcept C2776034101 @default.
- W2086383614 hasConcept C2778137410 @default.
- W2086383614 hasConcept C2778572836 @default.
- W2086383614 hasConcept C2780027415 @default.
- W2086383614 hasConcept C2780791683 @default.
- W2086383614 hasConcept C39549134 @default.
- W2086383614 hasConcept C41008148 @default.
- W2086383614 hasConcept C41895202 @default.
- W2086383614 hasConcept C62520636 @default.
- W2086383614 hasConcept C78458016 @default.
- W2086383614 hasConcept C86803240 @default.
- W2086383614 hasConceptScore W2086383614C110875604 @default.
- W2086383614 hasConceptScore W2086383614C111919701 @default.
- W2086383614 hasConceptScore W2086383614C121332964 @default.
- W2086383614 hasConceptScore W2086383614C124952713 @default.
- W2086383614 hasConceptScore W2086383614C136764020 @default.