Data Science Journal
Online ISSN : 1683-1470
Contributed Papers
Measuring Data Quality of Geoscience Datasets Using Data Mining Techniques
Cuo CaiKunqing Xie
著者情報
ジャーナル フリー

2007 年 6 巻 p. S738-S742

詳細
抄録

Currently there are many methods of collecting geoscience data, such as station observations, satellite images, sensor networks, etc. All of these data sources from different regions and time intervals are combined in geoscience research activities today. Using a mixture of several different data sources may have benefits but may also lead to severe data quality problems, such as inconsistent data and missing values. There have been efforts to produce more consistent data sets from multiple data sources. However, because of the huge gaps in data quality among the different sources, data quality inequality among different regions and time intervals has still occurred in the resultant data sets. As the construction methods of these data sets are quite complicated, it would be difficult for users to know the data quality of a dataset not to mention the data quality for a specified location or a given time interval. In this paper, the authors address the problem by generating a data quality measure for all regions and time intervals of a dataset. The data quality measure is computed by comparing the constructed datasets and their sources or other relevant data, using data mining techniques. This paper also demonstrates how to handle major quality problems, such as outliers and missing values, by using data mining techniques in the geoscience data, especially in global climate data.

著者関連情報

この記事は最新の被引用情報を取得できません。

前の記事 次の記事
feedback
Top