Matches in SemOpenAlex for { <https://semopenalex.org/work/W4283777981> ?p ?o ?g. }
Showing items 1 to 88 of
88
with 100 items per page.
- W4283777981 endingPage "118020" @default.
- W4283777981 startingPage "118020" @default.
- W4283777981 abstract "Most temporal association rule mining algorithms can mine the temporal relationship between items, but the sequential relations between successive items remain unknown, while sequential pattern mining algorithms can discover the sequential relationship between successive items but the quantitative time interval of sequential patterns remains unknown. Furthermore, they only focus on mining a historical temporal database, which ignores the fact that temporal databases are continually appended or updated. To address these problems, by integrating the advantages of these two algorithms, we extend the sequential pattern mining algorithm—PrefixSpan by introducing the concept of fuzzy temporal pattern and incremental learning, a new algorithm called Incremental sequential patterns for multivariate temporal association rules mining (ISPTAR) is proposed. First, the temporal transaction dataset obtained by fuzzy discretization of multivariate time series is converted into a temporal sequence dataset. Second, based on the PrefixSpan algorithm, the fuzzy temporal sequential patterns are mined by taking the valid time interval of the sequential pattern and the temporal relationship between items in the sequential pattern into account. Third, fuzzy temporal association rules can be constructed to mine the association between different attributes based on the mined fuzzy temporal sequential patterns. In addition, when new data are added, the proposed algorithm can update the sequential patterns without rescanning the historical database. We compare the ISPTAR algorithm with other sequential patterns mining and association rules mining algorithms on four real datasets from the UCI machine learning data repository. Experimental results demonstrate that ISPTAR, in most cases, outperformed the other algorithms in execution time and the number of generated rules. In addition, the rules generated by ISPTAR contain more temporal information, which is helpful to assist important decision-making. • PrefixSpan is extended to mine fuzzy sequential pattern from multivariate time series. • Time interval of sequential pattern can be mined from temporal sequence dataset. • Original mined information can be inherited to mine Incremental sequential patterns. • Fuzzy temporal association rules can be mined based on the mined sequential patterns." @default.
- W4283777981 created "2022-07-03" @default.
- W4283777981 creator A5004689037 @default.
- W4283777981 creator A5028614556 @default.
- W4283777981 date "2022-11-01" @default.
- W4283777981 modified "2023-10-16" @default.
- W4283777981 title "Incremental sequential patterns for multivariate temporal association rules mining" @default.
- W4283777981 cites W120860213 @default.
- W4283777981 cites W1578670939 @default.
- W4283777981 cites W1608194207 @default.
- W4283777981 cites W1680032417 @default.
- W4283777981 cites W1977055639 @default.
- W4283777981 cites W1990800901 @default.
- W4283777981 cites W2003787915 @default.
- W4283777981 cites W2009370830 @default.
- W4283777981 cites W2018048851 @default.
- W4283777981 cites W2040891895 @default.
- W4283777981 cites W2061178482 @default.
- W4283777981 cites W2081464336 @default.
- W4283777981 cites W2095438104 @default.
- W4283777981 cites W2095807566 @default.
- W4283777981 cites W2125231721 @default.
- W4283777981 cites W2143826688 @default.
- W4283777981 cites W2146606092 @default.
- W4283777981 cites W2160311168 @default.
- W4283777981 cites W2162261133 @default.
- W4283777981 cites W2164866344 @default.
- W4283777981 cites W2168196587 @default.
- W4283777981 cites W2239851290 @default.
- W4283777981 cites W2291052887 @default.
- W4283777981 cites W2340339255 @default.
- W4283777981 cites W2537091676 @default.
- W4283777981 cites W2585502432 @default.
- W4283777981 cites W2613683361 @default.
- W4283777981 cites W2757828982 @default.
- W4283777981 cites W2796882849 @default.
- W4283777981 cites W2811129012 @default.
- W4283777981 cites W2996380257 @default.
- W4283777981 cites W3001246121 @default.
- W4283777981 cites W3036827731 @default.
- W4283777981 cites W3096468961 @default.
- W4283777981 cites W3118831001 @default.
- W4283777981 doi "https://doi.org/10.1016/j.eswa.2022.118020" @default.
- W4283777981 hasPublicationYear "2022" @default.
- W4283777981 type Work @default.
- W4283777981 citedByCount "0" @default.
- W4283777981 crossrefType "journal-article" @default.
- W4283777981 hasAuthorship W4283777981A5004689037 @default.
- W4283777981 hasAuthorship W4283777981A5028614556 @default.
- W4283777981 hasConcept C111472728 @default.
- W4283777981 hasConcept C119857082 @default.
- W4283777981 hasConcept C124101348 @default.
- W4283777981 hasConcept C138885662 @default.
- W4283777981 hasConcept C142853389 @default.
- W4283777981 hasConcept C154945302 @default.
- W4283777981 hasConcept C161584116 @default.
- W4283777981 hasConcept C193524817 @default.
- W4283777981 hasConcept C41008148 @default.
- W4283777981 hasConceptScore W4283777981C111472728 @default.
- W4283777981 hasConceptScore W4283777981C119857082 @default.
- W4283777981 hasConceptScore W4283777981C124101348 @default.
- W4283777981 hasConceptScore W4283777981C138885662 @default.
- W4283777981 hasConceptScore W4283777981C142853389 @default.
- W4283777981 hasConceptScore W4283777981C154945302 @default.
- W4283777981 hasConceptScore W4283777981C161584116 @default.
- W4283777981 hasConceptScore W4283777981C193524817 @default.
- W4283777981 hasConceptScore W4283777981C41008148 @default.
- W4283777981 hasFunder F4320321001 @default.
- W4283777981 hasFunder F4320335787 @default.
- W4283777981 hasLocation W42837779811 @default.
- W4283777981 hasOpenAccess W4283777981 @default.
- W4283777981 hasPrimaryLocation W42837779811 @default.
- W4283777981 hasRelatedWork W1969663039 @default.
- W4283777981 hasRelatedWork W2062234344 @default.
- W4283777981 hasRelatedWork W2126967243 @default.
- W4283777981 hasRelatedWork W2148784155 @default.
- W4283777981 hasRelatedWork W2347219288 @default.
- W4283777981 hasRelatedWork W2348097614 @default.
- W4283777981 hasRelatedWork W2348925352 @default.
- W4283777981 hasRelatedWork W2383003961 @default.
- W4283777981 hasRelatedWork W2408152870 @default.
- W4283777981 hasRelatedWork W91256266 @default.
- W4283777981 hasVolume "207" @default.
- W4283777981 isParatext "false" @default.
- W4283777981 isRetracted "false" @default.
- W4283777981 workType "article" @default.