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An Integrated Approach to Improve Data Quality

Thesis / A huge quantity of data is created and saved everyday in databases from different types of data sources, including financial data, web log data, sensor data, and human input. Information technology enables organizations to collect and store large amounts of data in databases. Different organizations worldwide use data to support their activities through various applications. Issues in data quality such as duplicate records, inaccurate data, violations of integrity constraints, and outdated data are common in databases. Thus, data in databases are often unclean. Such issues in data quality might cost billions of dollars annually and might have severe consequences on critical tasks such as analysis, decision making, and planning. Data cleaning processes are required to detect and correct errors in the unclean data. Despite the fact that there are multiple quality issues, current data cleaning techniques generally deal with only one or two aspects of quality. The techniques assume either the availability of master data, or training data, or the involvement of users in data cleaning. For instance, users might manually place confidence scores that represent the correctness of the values of data or they may be consulted about the repairs. In addition, the techniques may depend on high-quality master data or pre-labeled training data to fix errors. However, relying on human effort to correct errors is expensive, and master data or training data are not always available. These factors make it challenging to discover which values have issues, thereby making it difficult to fix the data (e.g., merging several duplicate records into a single representative record). To address these problems in data cleaning, we propose algorithms that integrate multiple data quality issues in the cleaning. In this thesis, we apply this approach in the context of multiple data quality issues where errors in data are introduced from multiple causes. The issues include duplicate records, violations of integrity constraints, inaccurate data, and outdated data. We fix these issues holistically, without a need for human manual interaction, master data, or training data. We propose an algorithm to tackle the problem of data cleaning. We concentrate on issues in data quality including duplicate records, violations of integrity constraints, and inaccurate data. We utilize the embedded density information in data to eliminate duplicates based on data density, where tuples that are close to each other are packed together. Density information enables us to reduce manual user interaction in the deduplication process, and the dependency on master data or training data. To resolve inconsistency in duplicate records, we present a weight model to automatically assign confidence scores that are based on the density of data. We consider the inconsistent data in terms of violations with respect to a set of functional dependencies (FDs). We present a cost model for data repair that is based on the weight model. To resolve inaccurate data in duplicate records, we measure the relatedness of the words of the attributes in the duplicate records based on hierarchical clustering. In the context of integrating the fix of outdated data and inaccurate data in duplicate elimination, we propose an algorithm for data cleaning by introducing techniques based on corroboration, i.e. taking into consideration the trustworthiness of the attribute values. The algorithm integrates data deduplication with data currency and accuracy. We utilize the density information embedded inside the tuples in order to guide the cleaning process to fix multiple data quality issues. By using density information in corroboration, we reduce relying on manual user interaction, and the dependency on master data or training data. / Thesis / Doctor of Philosophy (PhD)

Identiferoai:union.ndltd.org:mcmaster.ca/oai:macsphere.mcmaster.ca:11375/19161
Date06 1900
CreatorsAl-janabi, Samir
ContributorsJanicki, Ryszard, Computing and Software
Source SetsMcMaster University
LanguageEnglish
Detected LanguageEnglish
TypeThesis

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