Academia.edu no longer supports Internet Explorer.
To browse Academia.edu and the wider internet faster and more securely, please take a few seconds to upgrade your browser.
2007
…
188 pages
1 file
I would like to thank Tiziana Catarci, Helena Galhardas, and Mokrane Bouzeghoub for kindly accepting to serve as readers and reviewers for this dissertation of "Habilitation à Diriger des Recherches" and to participate to the jury.
Autonomy Heterogeneity no yes totally semi DIS DW & MIS VMS CIS RS P2P no
International Journal of Business Information Systems, 2016
Data quality has significance to companies, but is an issue that can be challenging to approach and operationalise. This study focuses on data quality from the perspective of operationalisation by analysing the practices of a company that is a world leader in its business. A model is proposed for managing data quality to enable evaluation and operationalisation. The results indicate that data quality is best ensured when organisation specific aspects are taken into account. The model acknowledges the needs of different data domains, particularly those that have master data characteristics. The proposed model can provide a starting point for operationalising data quality assessment and improvement. The consequent appreciation of data quality improves data maintenance processes, IT solutions, data quality and relevant expertise, all of which form the basis for handling the origins of products.
2005
The exploration of data to extract information or knowledge to support decision making is a critical success factor for an organization in today's society. However, several problems can affect data quality. These problems have a negative effect in the results extracted from data, affecting their usefulness and correctness. In this context, it is quite important to know and understand the data problems. This paper presents a taxonomy of data quality problems, organizing them by granularity levels of occurrence. A formal definition is presented for each problem included. The taxonomy provides rigorous definitions, which are information-richer than the textual definitions used in previous works. These definitions are useful to the development of a data quality tool that automatically detects the identified problems.
Proceedings of the 2017 Federated Conference on Computer Science and Information Systems, 2017
The research discusses the issue how to describe data quality and what should be taken into account when developing an universal data quality management solution. The proposed approach is to create quality specifications for each kind of data objects and to make them executable. The specification can be executed step-by-step according to business process descriptions, ensuring the gradual accumulation of data in the database and data quality checking according to the specific use case. The described approach can be applied to check the completeness, accuracy, timeliness and consistency of accumulated data.
Handbook of Data Quality, 2013
This handbook is motivated by the presence of diverse communities within the area of data quality management, which have individually contributed a wealth of knowledge on data quality research and practice. The chapter presents a snapshot of these contributions from both research and practice, and highlights the background and rational for the handbook.
Proceedings of the 5th International Conference on Data Management Technologies and Applications, 2016
Dealing with data quality related problems is an important issue that all organizations face in realizing and sustaining data intensive advanced applications. Upon detecting these problems in datasets, data analysts often register them in issue tracking systems in order to address them later on categorically and collectively. As there is no standard format for registering these problems, data analysts often describe them in natural languages and subsequently rely on ad-hoc, non-systematic, and expensive solutions to categorize and resolve registered problems. In this contribution we present a formal description of an innovative data quality resolving architecture to semantically and dynamically map the descriptions of data quality related problems to data quality attributes. Through this mapping, we reduce complexity -as the dimensionality of data quality attributes is far smaller than that of the natural language space -and enable data analysts to directly use the methods and tools proposed in literature. Furthermore, through managing data quality related problems, our proposed architecture offers data quality management in a dynamic way based on user generated inputs. The paper reports on a proof of concept tool and its evaluation.
Integrity, Internal Control and Security in Information Systems, 2002
This paper first examines various issues on data quality and provides an overview of current research in the area. Then it focuses on research at the MITRE Corporation to use annotations to manage data quality. Next some of the emerging directions in data quality including managing quality for the semantic web and the relationships between data quality and data mining will be discussed. Finally some of the directions for data quality will be provided.
Journal of Data and Information Quality
In today's society the exploration of one or more databases to extract information or knowledge to support management is a critical success factor for an organization. However, it is well known that several problems can affect data quality. These problems have a negative effect in the results extracted from data, influencing their correction and validity. In this context, it is quite important to understand theoretically and in practice these data problems. This paper presents a taxonomy of data quality problems, derived from real-world databases. The taxonomy organizes the problems at different levels of abstraction. Methods to detect data quality problems represented as binary trees are also proposed for each abstraction level. The paper also compares this taxonomy with others already proposed in the literature.
2009 Ninth International Conference on Quality Software, 2009
Inadequate levels of Data Quality (DQ) in Information Systems (IS) suppose a very important problem for organizations. In any case, they look for to assure data quality from earlier stages on information system developments. This paper proposes to incorporate mechanisms into software development methodologies, in order to integrate users DQ requirements aimed at assuring the data quality from the beginning of development. It brings a framework consisting of processes, activities and tasks, well defined, which would be incorporated in existent software development methodology, as METRICA V3; and therefore, to assure software product data quality created according to this methodology. The extension presented, is a guideline, and this can be extended and applied to other development methodologies like Unified Development Process.
Lecture Notes in Business Information Processing, 2011
We motivate, formalize and investigate the notions of data quality assessment and data quality query answering as context dependent activities. Contexts for the assessment and usage of a data source at hand are modeled as collections of external databases, that can be materialized or virtual, and mappings within the collections and with the data source at hand. In this way, the context becomes "the complement" of the data source wrt a data integration system. The proposed model allows for natural extensions, like considering data quality predicates, and even more expressive ontologies for data quality assessment. Topics. Data quality and cleansing. ⋆ Research funded by the NSERC Strategic Network on BI (BIN, ADC05) ⋆⋆ Faculty Fellow of the IBM CAS. Also affiliated to University of Concepción (Chile). ⋆⋆⋆ Also affiliated to University of Ottawa.
Loading Preview
Sorry, preview is currently unavailable. You can download the paper by clicking the button above.
Information & Management, 1980
Information & Management, 1980
JUCS - Journal of Universal Computer Science, 2020
Proceedings of the 8th international workshop on Software quality - WoSQ '11, 2011
Australasian Database Conference, 2011
ACM SIGMOD Record, 2012
Future Computing and Informatics Journal, 2021
Proceedings of the 16th International …, 2011
International Journal of Information Quality, 2011