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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Daugiamačių sekų šablonų analizė / Multidimensional sequential pattern mining

Ivaškevičius, Klaidas 30 June 2014 (has links)
Pagrindinis šio magistro baigiamojo darbo tikslas buvo apžvelgti kai kurių algoritmų ir jų kombinacijų pritaikymą daugiamačiams sekų šablonams analizuoti ir įgyvendinti algoritmą, gebantį tai atlikti. Buvo aprašyta FP-Tree medžio struktūra, kuri yra skirta kompaktiškai saugoti kritiniams (pvz., dažnai pasikartojantiems) duomenims, pateiktas FP-Growth algoritmas, galintis analizuoti tokią duomenų struktūrą ir rezultate pateikiantis visų dažnų elementų šablonų aibę. Pristatyta modifikuotų FP-Growth ir PrefixSpan algoritmų kombinacija – MD-PS-FPG algoritmas, pateikti kai kurių atliktų testavimų rezultatai, tolimesnių darbų pagrindiniai tikslai ir pan. / The main goal of this master final work was to present some of the algorithms and their combinations for the multidimensional sequence pattern mining and implement an algorithm, that is capable of doing that. FP-Tree, that is used to store critical (for example, often repeated) data, was described. FP-Growth algorithm, that can analyze FP-Tree structure and give frequent pattern set as a result, was presented. MD-PS-FPG algorithm – a combination of modified FP-Growth and PrefixSpan algorithms – was introduced. The results of some tests, further work objectives and other things were also presented.
2

Sequential Pattern Mining on Electronic Medical Records for Finding Optimal Clinical Pathways

Edman, Henrik January 2018 (has links)
Electronic Medical Records (EMRs) are digital versions of paper charts, used to record the treatment of different patients in hospitals. Clinical pathways are used as guidelines for how to treat different diseases, determined by observing outcomes from previous treatments. Sequential pattern mining is a version of data mining where the data mined is organized in sequences. It is a common research topic in data mining with many new variations on existing algorithms being introduced frequently. In a previous report, the sequential pattern mining algorithm PrefixSpan was used to mine patterns in EMRs to verify or suggest new clinical pathways. It was found to only be able to verify pathways partially. One of the reasons stated for this was that PrefixSpan was too inefficient to be able to mine at a low enough support to consider some items. In this report CSpan is used instead, since it is supposed to outperform PrefixSpan by up to two orders of magnitude, in order to improve runtime and thereby address the problems mentioned in the previous work. The results show that CSpan did indeed improve the runtime and the algorithm was able to mine at a lower minimum support. However, the output was only barely improved. / Electronic Medical Records (EMRs) är digitala versioner av behandlingshistoriken för patienter på sjukhus. Clinical pathways används som riktlinjer för hur olika sjukdomar borde behandlas, vilka bestäms genom att observera utkomsten av tidigare behandlingar. Sequential pattern mining är en typ av data mining där datan som behandlas är strukturerad i sekvenser. Det är ett vanligt forskningsområde inom data mining där många nya variationer av existerande algoritmer introduceras frekvent. I en tidigare rapport användes sequential pattern mining algoritmen PrefixSpan på EMRs för att verifiera eller föreslå nya clinical pathways. Den kunde dock endast verifiera pathways delvis. En av anledningarna som nämndes för detta var att PrefixSpan var för ineffektiv för att kunna köras med en tillräckligt låg support för att kunna finna vissa åtgärder i en behandling. I den här rapporten används istället CSpan, eftersom den ska överprestera PrefixSpan med upp till två storleksordningar, för att förbättra körningstiden och därmed adressera problemen som nämns i den tidigare rapporten. Resultaten visar att CSpan förbättrade körningstiden och algoritmen kunde köras med lägre support. Däremot blev utdatan knappt förbättrad.
3

Dolování sekvenčních vzorů / Sequential Pattern Mining

Tisoň, Zdeněk January 2012 (has links)
This master's thesis is focused on knowledge discovery from databases, especially on methods of mining sequential patterns. Individual methods of mining sequential patterns are described in detail. Further, this work deals with extending the platform Microsoft SQL Server Analysis Services of new mining algorithms. In the practical part of this thesis, plugins for mining sequential patterns are implemented into MS SQL Server. In the last part, these algorithms are compared on different data sets.

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