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2. Probabilistic Mineral Resource Potential Mapping The processing of geo-scientific information for the purpose of estimating probabilities of occurrence for various types of mineral deposits was made easier when Geographic Information Systems became available. Weights-of-Evidence modeling and logistic regression are examples of GIS implementations.
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Weights of Evidence (WofE)
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BAYES’ RULE P(D on A) = P(D and A)/P(A) P(A on D) = P(A and D)/P(D) P(D on A) = P(A on D) * P(D)/P(A)
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ODDS & LOGITS O = P/(1-P); P = O/(1+O); logit = ln O ln O(D on A) = W + (A) + ln O(D) W + (A) = ln {P(A on D)/P(A not on D)}
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VARIANCE OF WEIGHT s 2 = n -1 (A and D) + n -1 (A and not D)
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Negative Weight & Contrast W - (A) = W + (not A) Contrast: C = W + (A) - W - (A)
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PRESENT, ABSENT or MISSING add W +, W - or 0 to prior logit
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TWO or MORE LAYERS Add Weight(s) assuming Conditional Independence P( on D) = P(A on D) * P(B on D)
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UNCERTAINTY DUE TO MISSING DATA P(D) = E X {P(D on X)} = P(D on A i ) * P(A i ) or P(D on ) * P( ) etc.
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VARIANCE (MISSING DATA) 2 {P(D)} = {P(D on A i ) - P(D)} 2 * P(A i ) or {P(D on ) - P(D)} 2 * P( ) etc.
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TOTAL UNCERTAINTY Var (Posterior Logit) = Var (Prior Logit) + + Var (Weights) + Var (Missing Data)
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Uncertainty in Logits and Probabilities D {Logit (P)} = 1/P(1-P) (P) ~ P(1-P) Logit (P)}
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Meguma Terrain Example
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Table 1. Number of gold deposits, area in km 2, weights, contrast (C) with standard deviations (s). In total: 68 deposits on 2945 km 2
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Logistic Regression Logit ( i ) = 0 + x i1 1 + x i2 2 + … + x im m
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Newton-Raphson Iteration (t+1) = (t) + {X T V(t)X)} -1 X T r(t), t = 1, 2, … r(t) = y(t) - p(t)
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Seafloor Example
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NEW CONDITIONAL INDEPENDENCE TEST FOR WEIGHTS OF EVIDENCE METHOD
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Definitions N = Number of unit cells N A = Number of unit cells on map layer A n = Number of deposits n A = Number of deposits on map layer A P(d |A) = Probability that unit cell on A contains a deposit X A = Binary random variable for occurrence of deposit in unit cell on A with EX A = P(d |A) = n A / n T = Random variable for number of deposits in study area
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Single binary pattern A (~A = not A) Posterior Probabilities = N A P(d |A) + N ~A P(d |~A) = = N A {n A / N A } + N ~A {n ~A / N ~A } = n 2 (T) = N A 2 2 (X A ) + N ~A 2 2 (X ~A )
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Two binary patterns (A and B): Posterior Probabilities = N AB P(d |AB) + N A~B P(d |A~B) + + N ~AB P(d |~AB) + N ~A~B P(d |~A~B) = = n AB + n A~B + n ~AB + n ~A~B = = n A. n B / n + n A. n ~B / n + n ~A. n B / n + n ~A. n ~B / n = = n A.{n B + n ~B }/ n + n ~A.{n B + n ~B }/ n = n 2 (T) = N AB 2 2 (X AB ) + N A~B 2 2 (X A~B ) + N ~AB 2 2 (X ~AB ) + N ~A~B 2 2 (X ~A~B )
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New conditional independence test applied to ocean floor hydrothermal vent example Total number of vents n = 13 3-map layer model predicts 14.05 (s.d. = 6.45) P(T = N) > 99% (c.l. = 28.03) 5-map layer model predicts 37.59 (s.d. = 10.47) P(T > N) > 99% (c.l. = 37.40)
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Application of Weights of Evidence Method for Assessment of Flowing Wells in the Greater Toronto Area, Canada By Qiuming Cheng, Natural Resources Research, vol. 13, no. 2, June 2004
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ORM Study Area and Surficial Geology of Southern Ontario
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Oak Ridges Moraine
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Digital Elevation Model Southern Ontario
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DEM and Location of ORM
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Geology of ORM
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Flowing Wells and Springs
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Spatial Decision Support System (SDSS) GIS Data Integration for Prediction Aquifers Drift Thickness Slope Lithology...... IntegrationPotential Evidential Layers (X) Modeling (F) Output Data S Processing DBMS GIS Database GIS Data Preprocessing Interpreting Define correlated patterns using training points Integrated correlated patterns to estimate unknown points Modeling Prediction
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Flowing Wells vs. Distance from ORM Spatial Correlation Distance
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Flowing Wells vs. Distance From High Slope Zone Spatial Correlation Distance
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Flowing Wells vs. Thickness of Drift
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Flowing vs. Distance from Thick Drift Spatial Correlation Distance
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Posterior Probability Map calculated by Arc-WofE from buffer zones around ORM and steep slope zones
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Mapping potential groundwater discharges using Multivariate Logistic Regression
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Modelling Uncertainty in Weights due to Kriging variance
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Linear Regression with Missing Data Y = 0 + 1 x + b 1 = (x i -m x )(y i -m y )/ (x i -m x ) 2
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Table 2. Comparison of 4 logistic regression solutions: A. Layer deleted; B. Absences set to 0; C. Cells deleted; D. Use of Weighted Mean.
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Logistic Regression & Maximum Likelihood P(Y=1|x) = (x) = e f(x) /{1+ e f(x) } P(Y=0|x) = 1- (x) (x i ) = (x i ) y i {1- (x i )} 1- y i l( ) = (x i )
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Bivariate Logistic Regression Logit ( i ) = 0 + x i1 1 = [ 0 1 ]
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Log Likelihood Function L( ) = ln{l( )} = = [y i ln{ (x i )}+(1- y i ) ln{1- (x i )}]
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Differentiate with respect to 0 and 1 to obtain likelihood equations: {y i - (x i )} = 0 x i {y i - (x i )} = 0
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Total number of discrete events = Sum of estimated probabilities y i = p(x i )
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Weighted logistic regression convergence experiments (Level of convergence = 0.01) Seafloor Example (N = 13): Unit cell of 0.01 km 2 12.72; 0.001 km 2 12.97; 0.0001 km 2 13.00 Meguma Terrane Example (N = 68) Unit cell of 1 km 2 64.71; 0.1 km 2 67.96
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