TY - GEN
T1 - Open Business Intelligence
T2 - Joint EDBT/ICDT Workshops 2012
AU - Mazón, Jose Norberto
AU - Zubcoff, Jose Jacobo
AU - Garrigós, Irene
AU - Espinosa, Roberto
AU - Rodríguez, Rolando
PY - 2012
Y1 - 2012
N2 - Citizens demand more and more data for making decisions in their daily life. Therefore, mechanisms that allow citizens to understand and analyze linked open data (LOD) in a user-friendly manner are highly required. To this aim, the concept of Open Business Intelligence (OpenBI) is introduced in this position paper. OpenBI facilitates non-expert users to (i) analyze and visualize LOD, thus generating actionable information by means of reporting, OLAP analysis, dashboards or data mining; and to (ii) share the new acquired information as LOD to be reused by anyone. One of the most challenging issues of OpenBI is related to data mining, since non-experts (as citizens) need guidance during preprocessing and application of mining algorithms due to the complexity of the mining process and the low quality of the data sources. This is even worst when dealing with LOD, not only because of the different kind of links among data, but also because of its high dimensionality. As a consequence, in this position paper we advocate that data mining for OpenBI requires data quality-aware mechanisms for guiding non-expert users in obtaining and sharing the most reliable knowledge from the available LOD.
AB - Citizens demand more and more data for making decisions in their daily life. Therefore, mechanisms that allow citizens to understand and analyze linked open data (LOD) in a user-friendly manner are highly required. To this aim, the concept of Open Business Intelligence (OpenBI) is introduced in this position paper. OpenBI facilitates non-expert users to (i) analyze and visualize LOD, thus generating actionable information by means of reporting, OLAP analysis, dashboards or data mining; and to (ii) share the new acquired information as LOD to be reused by anyone. One of the most challenging issues of OpenBI is related to data mining, since non-experts (as citizens) need guidance during preprocessing and application of mining algorithms due to the complexity of the mining process and the low quality of the data sources. This is even worst when dealing with LOD, not only because of the different kind of links among data, but also because of its high dimensionality. As a consequence, in this position paper we advocate that data mining for OpenBI requires data quality-aware mechanisms for guiding non-expert users in obtaining and sharing the most reliable knowledge from the available LOD.
KW - Design
UR - https://www.scopus.com/pages/publications/84864120849
U2 - 10.1145/2320765.2320812
DO - 10.1145/2320765.2320812
M3 - Conference contribution
AN - SCOPUS:84864120849
SN - 9781450311434
T3 - ACM International Conference Proceeding Series
SP - 144
EP - 147
BT - Proceedings - Joint EDBT/ICDT Workshops 2012
Y2 - 30 March 2012 through 30 March 2012
ER -