@conference{364, keywords = {Time-Oriented Data, taxonomy, dirty data, data quality, data cleansing}, author = {Theresia Gschwandtner and Johannes Gärtner and Wolfgang Aigner and Silvia Miksch}, title = {A Taxonomy of Dirty Time-Oriented Data}, abstract = {Data quality is a vital topic for business analytics in order to gain accurate insight and make correct decisions in many data-intensive industries. Albeit systematic approaches to categorize, detect, and avoid data quality problems exist, the special characteristics of time-oriented data are hardly considered. However, time is an important data dimension with distinct characteristics which a ffords special consideration in the context of dirty data. Building upon existing taxonomies of general data quality problems, we address `dirty' time-oriented data, i.e., time-oriented data with potential quality problems. In particular, we investigated empirically derived problems that emerge with di fferent types of time-oriented data (e.g., time points, time intervals) and provide various examples of quality problems of time-oriented data. By providing categorized information related to existing taxonomies, we establish a basis for further research in the field of dirty time-oriented data, and for the formulation of essential quality checks when preprocessing time-oriented data. }, year = {2012}, journal = {Lecture Notes in Computer Science (LNCS 7465): Multidisciplinary Research and Practice for Information Systems (Proceedings of the CD-ARES 2012)}, pages = {58 -- 72}, publisher = {Springer, Berlin / Heidelberg}, address = {Prague, Czech Republic}, isbn = {978-3-642-32497-0}, url = {http://publik.tuwien.ac.at/files/PubDat_209199.pdf}, doi = {10.1007/978-3-642-32498-7_5}, note = {accepted }, }