aTLP: A color-based model of uncertainty to evaluate the risk of decisions based on prototypes

Clustering techniques find homogeneous and distinguishable prototypes. Careful interpretation of these prototypes is crucial to assist the experts to better organize this know-how and to really improve their decision-making processes. The Traffic Lights Panel was introduced in 2009 as a postprocessing tool to provide understanding of clustering prototypes. In this work, annotated Traffic Lights Panel (aTLP) is presented as an enrichment of the TLP to manage the intrinsic uncertainty related with prototypes themselves. The aTLP handles uncertainty through a quantification of the prototypes' purity based on the variation coefficients (VC) and an associated color-based uncertainty model, with two dimensions – tone and saturation – representing nominal trend and purity of the prototype. An application to a waste-water treatment plant in Slovenia, in a discrete and continuous approach, suggests that aTLP seems a useful and friendly tool able to reduce the gap between data mining and effective decision support, towards informed-decisions.

[1]  Karina Gibert,et al.  Knowledge discovery with clustering based on rules by states: A water treatment application , 2010, Environ. Model. Softw..

[2]  Miquel Sànchez-Marrè,et al.  Chapter Twelve Data Mining for Environmental Systems , 2008 .

[3]  Karina Gibert,et al.  Post-processing: Bridging the gap between modelling and effective decision-support. The profile assessment grid in human behaviour , 2013, Mathematical and computer modelling.

[4]  Karina Gibert,et al.  The use of the Traffic Lights Panel as a goodness-of-clustering indicator - An application to Financial Assets , 2012, CCIA.

[5]  Padhraic Smyth,et al.  From Data Mining to Knowledge Discovery: An Overview , 1996, Advances in Knowledge Discovery and Data Mining.

[6]  Miquel Sànchez-Marrè,et al.  Decreasing Uncertainty When Interpreting Profiles through the Traffic Lights Panel , 2012, IPMU.

[7]  Karina Gibert,et al.  Knowledge Discovery about Quality of Life Changes of Spinal Cord Injury Patients: Clustering Based on Rules by States , 2009, MIE.

[8]  R. Suganya,et al.  Data Mining Concepts and Techniques , 2010 .

[9]  Albert Fornells,et al.  Explanations of unsupervised learning clustering applied to data security analysis , 2009, Neurocomputing.

[10]  Rita Gunther McGrath Business Models: A Discovery Driven Approach , 2010 .

[11]  Susan G. Hutchins,et al.  Principles for Intelligent Decision Aiding , 1996 .

[12]  Paulo Cortez,et al.  Using sensitivity analysis and visualization techniques to open black box data mining models , 2013, Inf. Sci..

[13]  Karina Gibert,et al.  ASSISTING THE END-USER IN THE INTERPRETATION OF PROFILES FOR DECISION SUPPORT. AN APPLICATION TO WASTEWATER TREATMENT PLANTS , 2012 .

[14]  P. Feldman,et al.  Improving communication between researchers and policy makers in long-term care or "researchers are from Mars; policy makers are from Venus". , 2001, Policy brief (Center for Home Care Policy and Research (U.S.)).

[15]  J. Comas,et al.  Energy Saving in a Wastewater Treatment Process: an Application of Fuzzy Logic Control , 2005, Environmental technology.