National Repository of Grey Literature 7 records found  Search took 0.00 seconds. 
Family Trees Making from Parish Records
Tušimová, Lucia ; Zbořil, František (referee) ; Rozman, Jaroslav (advisor)
This work discusses the field of genealogy, different types of records and data in them. The thesis describes the topic of comparison of data and record linkage. It further it also discusses the design and implementation of the resulting system. The developed system connects people from parish records to larger pedigrees. These are then stored in the form of a graph database. The success of the interconnection of records was tested on the provided data sets.
Family Trees Making from Parish Records
Marhefka, Adam ; Šátek, Václav (referee) ; Rozman, Jaroslav (advisor)
This work will discuss the field of genealogy, processing, comparing, and classifying genealogical data and subsequent connection of this processed data into bigger structures in graph database. This work directly continues the work of Ing Tušimová and further expands it. The expansions described in the work will be dedicated to addition of support for more forms of input genealogical data, optimization and expansions of the core algorithm realizing the processing of genealogical records. The goal of this work is therefore to make the core algorithm more efficient and precise as well as the addition of support for parish records of marriages and deaths.
Semi-Automatic Word Normalization in Parish Records
Hříbek, David ; Zbořil, František (referee) ; Rozman, Jaroslav (advisor)
This work deals with the extension of DEMoS web application for the management of parish records by the possibility of normalization (assignment of a normalized form of writing to individual words) of names, surnames, occupations, domiciles and other types of words occurring in parish records. In the solution, a duplicate record detection process was used, which allowed sorting of the records from parish records into clusters of similar words. As a result of the clustering, it was possible to share normalized word variants within these clusters. Thus, DEMoS suggests normalized variants for words entered by users, used not only for the same words, but also for similar words. In this work, automatic testing of word clustering was proposed. In total, 640 different combinations of clustering parameters were tested for each word type. Subsequently, the best clustering parameters were selected for each word type. By normalizing words, DEMoS application significantly increases the efficiency of searching in parish records. Records are also easier to read.
Batch Processing of Genealogical Data
Janda, Adam ; Rozman, Jaroslav (referee) ; Kočí, Radek (advisor)
This thesis describes the design, development, and implementation of batch processing of parish records using a template system. The batch processing of records is an extension of the DEMoS project, which deals with the digitization of historical parish records. The connection of the designed module to the web interface brings the possibility of bulk addition of new records or batch editing. Part of the solution is data entry, the extraction of parish data into a CSV file stored in the database. A total of 15 templates were designed for each type of parish record (birth, death, and marriage records). By modifying or expanding these templates, batch processing can be adapted to the architectural change in the database structure due to the incompleteness of parish register formats.
Family Trees Making from Parish Records
Marhefka, Adam ; Šátek, Václav (referee) ; Rozman, Jaroslav (advisor)
This work will discuss the field of genealogy, processing, comparing, and classifying genealogical data and subsequent connection of this processed data into bigger structures in graph database. This work directly continues the work of Ing Tušimová and further expands it. The expansions described in the work will be dedicated to addition of support for more forms of input genealogical data, optimization and expansions of the core algorithm realizing the processing of genealogical records. The goal of this work is therefore to make the core algorithm more efficient and precise as well as the addition of support for parish records of marriages and deaths.
Family Trees Making from Parish Records
Tušimová, Lucia ; Zbořil, František (referee) ; Rozman, Jaroslav (advisor)
This work discusses the field of genealogy, different types of records and data in them. The thesis describes the topic of comparison of data and record linkage. It further it also discusses the design and implementation of the resulting system. The developed system connects people from parish records to larger pedigrees. These are then stored in the form of a graph database. The success of the interconnection of records was tested on the provided data sets.
Semi-Automatic Word Normalization in Parish Records
Hříbek, David ; Zbořil, František (referee) ; Rozman, Jaroslav (advisor)
This work deals with the extension of DEMoS web application for the management of parish records by the possibility of normalization (assignment of a normalized form of writing to individual words) of names, surnames, occupations, domiciles and other types of words occurring in parish records. In the solution, a duplicate record detection process was used, which allowed sorting of the records from parish records into clusters of similar words. As a result of the clustering, it was possible to share normalized word variants within these clusters. Thus, DEMoS suggests normalized variants for words entered by users, used not only for the same words, but also for similar words. In this work, automatic testing of word clustering was proposed. In total, 640 different combinations of clustering parameters were tested for each word type. Subsequently, the best clustering parameters were selected for each word type. By normalizing words, DEMoS application significantly increases the efficiency of searching in parish records. Records are also easier to read.

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