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1 Geographic Data Uncertainty There are thousands of ways to measure the position, shape, orientation and size of phenomena or objects Data uncertainty.

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Presentation on theme: "1 Geographic Data Uncertainty There are thousands of ways to measure the position, shape, orientation and size of phenomena or objects Data uncertainty."— Presentation transcript:

1 1 Geographic Data Uncertainty There are thousands of ways to measure the position, shape, orientation and size of phenomena or objects Data uncertainty varies spatially and over time Ambiguity of concepts (semantics, geometry) Poorly known resolution and precision Lack of up-to-dateness and timeliness Incompleteness Low level of « processability » …

2 2 Geographic Data Uncertainty Everytime data are reused or transformed, additional uncertainty is introduced

3 Geographic Data Uncertainty There always remain residual uncertainty = risk absorbed by data producers data producers data brokers data brokers Users Users Uncertainty can be reduced Better observation technologies and methods Better observation technologies and methods Standards Standards Training Training … 3

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5 Geographic Data Uncertainty and Ethics Typical users take digital data for granted, assuming their quality is high and fits the intended usage An increasing number of incidents and accidents result from the inappropriate use of geospatial data 5

6 Geographic Data Uncertainty and Ethics “Erroneous, inadequately documented, or inappropriate data can have grave consequences for individuals and the environment.” “Erroneous, inadequately documented, or inappropriate data can have grave consequences for individuals and the environment.” (AAG Geographic Information Ethics Session Description, 2009) 6

7 http://dataquality.scg.ulaval.ca

8 Geographic Data Uncertainty and Ethics From an ethics point of view: Poor quality data should not be used for sensitive applications where it poses a risk of harm Need appropriate safeguards to avoid the harm, and to provide effective warnings Not enough just to anticipate intended uses and data quality requirements. Must anticipate the possible misuses of the system as well

9 Data Uncertainty: today’s approaches Victims’ approaches and reactions Don’t buy Never use again… Don’t follow Don’t use from Bedard et al., U. of Laval

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11 Ethical Analysis Step 1. State problem. Step 2. Check facts. Many problems disappear upon closer examination, while others change radically. Step 3: Identify relevant factors. For example, persons involved, laws, professional code, other practical constraints. Step 4: Develop list of options. Be imaginative, try to avoid “dilemma.” Step 5: Test options using seven tests. Step 6: Make a choice. Step 7: Review steps 1-6 Source: DiBiase et al under review

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13 Data Uncertainty: Today’s Approaches Spatial Database Internet Data Diffusion Data production Data collection Data Selection Paper map Web services Data Usage Users Error-aware GIS, Fuzzy operators Quality analysis system Metadata management Context-sensitive warnings Methods to select best sources Spatial Integrity constraints Specifications, Quality control web services Users... -Training -Manuals -Access control from Bedard et al., U. of Laval

14 Data Uncertainty: today’s approaches Ethics-related issue Codes of ethics influence « Good Practices » Ex. professionals must care about individuals and environment « Professional misconduct » is typically set out in regulations Ex. Negligence, failure to report or remedy to a danger, to protect people In case of lawsuits, Codes of ethics have impacts

15 Data Uncertainty: today’s approaches Ethics-related issue Professional self-regulatory bodies have codes of ethics contained in regulations These regulations are enacted by governments Professionals’ primary duty is to the public welfare

16 Data Uncertainty: today’s approaches Ethics-related issue Data uncertainty issues end up in the hands of legal systems, but they begin in the hands of systems designers Software engineering methods based on formal models are recognized as the most rigorous approaches to develop quality systems Good practices require to understand clearly data quality requirements and fitness-for-use from Bedard et al., U. of Laval

17 Data Uncertainty: today’s approaches Ethics-related issue It is a duty for the expert to care about users and to inform them about inappropriate usages of spatial data from Bedard et al., U. of Laval

18 Data Uncertainty: today’s approaches Ethics-related issue Involve client in every phase of a system development method This involvement must include decisions about the risks related to spatial data definition, selection, production, dissemination and potential reuse (intended or not) Risk-related decisions must be understood and approved by the client from Bedard et al., U. of Laval

19 CAR EFU L C.A.R.E.F.U.L. Computer-Assisted Risk Evaluation For Usage Limitation Yvan Bédard 1, Jennifer Chandler 2, Rodolphe Devillers 3, Marc Gervais 1 1 Univ. Laval, Geomatics 2 Univ. of Ottawa, Law 3 Memorial Univ. of Newfoundland, Geography

20 « C.A.R.E.F.U.L. » + CAREFUL extension Formal method + Data modeling tool CAREFUL knowledge about risk traditional knowledge about risk

21 « C.A.R.E.F.U.L. » CAREFUL: WHAT: better risk management of potential spatial data misuses HOW: extending system design methods and modeling tools to add risk-related info WHY: professional ethics, liability New needs New usages Risk analysis Warnings Risk strategy Training, doc. Informed and protected users -Indifferent -Avoid -Transfer -Control -Identify -Evaluate

22 « C.A.R.E.F.U.L. » Risk-related metadata in Data modeling tool

23 « C.A.R.E.F.U.L. » ISO-3864-2 Symbols for Warnings in Data Modeling Tool

24 « C.A.R.E.F.U.L. » Risk-Related Reporting with the help of Data Modeling Tool -user manual -training material -fitness-for-use report - …

25 « C.A.R.E.F.U.L. » Context-sensitive Warnings Generated from Data Modeling Tool

26 Canada GEOIDE Project #PIV-23 Privacy Data mashup Quality of GI Civil liability Social and legal issues Protection of investment and copyright Selection and usage of GI Objective: to develop innovative solutions to evaluate GI quality and contribute to its responsible commercialization and hence achieve an healthy protection of the public Geomatics Engineering Faculty of Law Geomatics Engineering Geography

27 On the U.S. side, NSF Ethics Education

28 Impacts on Professional System Designers, GIS Users Ethics leads to protecting users against harm Several approaches exist to reduce risks Ethics leads to manage the risks related to uncertain data or inappropriate uses of data including unintended uses CAREFUL is a new ethics-centered approach extending formally proven software engineering methods Gisprofessionalethics.org contain new GIS ethics-centered graduate curricula in progress Gisprofessionalethics.org contain new GIS ethics-centered graduate curricula in progress

29 Gateway to the Literature Plewe, B. The nature of uncertainty in historical geographic information, Transactions in GIS, 6(4): 431- 456, 2002. UCGIS. Uncertainty in Geographic Data and GIS-Based Analyses, UCGIS Research Priority White Paper, Leesburg, VA: UCGIS, 2002. DiBiase, D., Harvey, F., Wright, D., and Goranson, C. The GIS professional ethics project: Practical ethics education for GIS professionals, in Unwin, D., Foote, K., Tate, N., and DiBiase, D. (eds.), Teaching Geographic Information Science and Technology in Higher Education, London: Wiley and Sons, in press, 2011.

30 Gateway to the Literature Bater, C. W. and N. C. Coops (2009). "Evaluating error associated with LIDAR- derived DEM interpolation." Comp. Geosci 35: 289-300. Dendoncker, N., C. Schmit, et al. (2008). "Exploring spatial data uncertainties in land-use change scenarios." Int. J. Geog. Inf. Sci. 22(9): 1013-1030. Xiao, N., C. A. Calder, et al. (2007). "Assessing the effect of attribute uncertainty on the robustness of choropleth map classification." Int. J. Geog. Inf. Sci. 21(1- 2): 121-144. Aguilar, F. J., M. A. Aguilar, et al. (2007). "Accuracy assessment of digital elevation models using a non-parametric approach." Int. J. Geog. Inf. Sci. 21(6- 7): 667-686. Zhou, Q., X. Liu, et al. (2006). "Terrain complexity and uncertainties in grid- based digital terrain analysis." Int. J. Geog. Inf. Sci. 20(10): 1137-1148. Oksanen, J. and T. Sarjakoski (2006). "Uncovering the statistical and spatial characteristics of fine toposcale DEM error." Int. J. Geog. Inf. Sci. 20(4): 345- 370.

31 Lindsay, J. B. (2006). "Sensitivity of channel mapping techniques to uncertainty in digital elevation data." Int. J. Geog. Inf. Sci. 20(6): 669-692. Henley, S. (2006). "The problem of missing data in geoscience databases." Comp. Geosci 32: 1368-1377. Gregory, I. N. and P. S. Ell (2006). "Error-sensitive historical GIS: Identifying areal interpolation errors in time-series data." Int. J. Geog. Inf. Sci. 20(2): 135-152. Bishop, T. F. A., B. Minasny, et al. (2006). "Uncertainty analysis for soil-terrain models." Int. J. Geog. Inf. Sci. 20(2): 117-134. Wu, J., T. H. Funk, et al. (2005). "Improving spatial accuracy of roadway networks and geocoded addresses." Trans. GIS 9(4): 585-602. Shi, W. Z., Q. Q. Li, et al. (2005). "Estimating the propagation error of DEM from higher-order interpolation algorithms." Int. J. Remote Sensing 26(14): 3069-3084. Shi, W. Z., M. Ehlers, et al. (2005). "Uncertainties in integrated remote sensing and GIS." Int. J. Remote Sensing 26(14): 2911-2916. Kardos, J., G. Benwell, et al. (2005). "The visualisation of uncertainty for spatially referenced census data using hierarchical tessellations." Trans. GIS 9(1): 19-34.


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