Comparing Single and Multiple Imputation Approaches for Missing Values in Univariate and Multivariate Water Level Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Missing Data Mechanisms
2.2.1. Missing Completely at Random
2.2.2. Missing at Random
2.2.3. Missing Not at Random
2.3. Imputation Methods for Univariate and Multivariate Data
2.3.1. Imputation Methods for Univariate Water Level Time Series Data
Kalman Smoothing Method
Seasonal Decomposition Method
Random Method
2.3.2. Imputation Methods for Multivariate Water Level
k Nearest Neighbour Method
Predictive Mean Matching Method
Random Forests Method
2.4. Evaluation Metrics
3. Results
3.1. Univariate Water Level Imputation
3.2. Multivariate Water Level Imputation
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviation
Abbreviation | Meaning |
Missing data mechanisms | |
MCAR | Missing completely at random |
MAR | Missing at random |
MNAR | Missing not at random |
Imputation methods | |
KS | Kalman smoothing |
Sdec | Seasonal decomposition |
PMM | Predictive mean matching |
kNN | k nearest neighbour |
RF | Random forest |
MF | missForest |
Evaluation metrics | |
RMSE | Root mean square error |
MAPE | Mean absolute percentage error |
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Water Station | State | River | Established (Year) | Time (Month) | Latitude (Degrees) | Longitude (Degrees) |
---|---|---|---|---|---|---|
Kainji | Niger | Niger | 1980 | 2010–2016 | 10.0300 | 4.6000 |
Ibi | Taraba | Benue | 1980 | 2011–2016 | 8.1800 | 9.7200 |
Makurdi | Benue | Benue | 2010 | 2011–2016 | 7.7500 | 8.5300 |
Umaisha | Nasarawa | Benue | 1980 | 2011–2016 | 7.9800 | 7.2000 |
% Missing | Method | MCAR | RMSE MAR | MNAR | |||
---|---|---|---|---|---|---|---|
5 | KS | 13.61 | (8.94) | 16.35 | (11.68) | 15.61 | (10.80) |
Random | 102.60 | (35.74) | 96.28 | (27.07) | 92.76 | (27.84) | |
Sdec | 10.46 | (5.96) | 13.53 | (7.98) | 13.76 | (7.60) | |
10 | KS | 25.36 | (13.49) | 22.44 | (11.62) | 25.42 | (12.60) |
Random | 140.93 | (30.51) | 135.77 | (26.30) | 130.60 | (22.46) | |
Sdec | 21.22 | (8.83) | 19.12 | (8.46) | 22.33 | (12.05) | |
20 | KS | 42.00 | (10.59) | 49.71 | (24.94) | 50.41 | (26.27) |
Random | 204.30 | (28.58) | 205.60 | (30.97) | 209.40 | (21.59) | |
Sdec | 34.73 | (8.24) | 39.06 | (10.78) | 37.77 | (9.13) | |
30 | KS | 69.53 | (20.06) | 67.12 | (28.94) | 68.04 | (17.96) |
Random | 253.00 | (33.19) | 247.70 | (23.02) | 248.50 | (27.11) | |
Sdec | 54.99 | (16.06) | 44.02 | (10.26) | 45.90 | (12.76) | |
40 | KS | 96.19 | (21.31) | 108.53 | (32.82) | 97.17 | (29.80) |
Random | 287.70 | (25.80) | 287.20 | (25.45) | 286.60 | (27.53) | |
Sdec | 73.24 | (25.38) | 75.16 | (32.89) | 71.58 | (28.49) | |
50 | KS | 134.41 | (29.58) | 134.38 | (29.17) | 141.40 | (46.30) |
Random | 318.10 | (27.76) | 320.50 | (23.43) | 319.90 | (25.10) | |
Sdec | 112.91 | (44.28) | 97.97 | (52.64) | 102.70 | (41.57) |
% Missing | Method | MCAR | MAPE × 103 MAR | MNAR | |||
---|---|---|---|---|---|---|---|
5 | KS | 0.18 | (0.13) | 0.19 | (0.09) | 0.19 | (0.13) |
Random | 1.27 | (0.44) | 1.08 | (0.35) | 1.23 | (0.52) | |
Sdec | 0.16 | (0.10) | 0.18 | (0.09) | 0.17 | (0.12) | |
10 | KS | 0.39 | (0.16) | 0.38 | (0.15) | 0.35 | (0.16) |
Random | 2.45 | (0.72) | 2.87 | (0.64) | 2.65 | (0.64) | |
Sdec | 0.36 | (0.14) | 0.33 | (0.13) | 0.33 | (0.14) | |
20 | KS | 1.02 | (0.41) | 1.05 | (0.36) | 0.90 | (0.33) |
Random | 5.56 | (1.02) | 5.40 | (0.95) | 5.91 | (0.92) | |
Sdec | 0.79 | (0.23) | 0.83 | (0.20) | 0.76 | (0.20) | |
30 | KS | 1.90 | (0.56) | 2.11 | (1.25) | 1.85 | (0.63) |
Random | 7.98 | (1.21) | 7.56 | (1.54) | 8.36 | (0.98) | |
Sdec | 1.41 | (0.71) | 1.46 | (0.51) | 1.35 | (0.27) | |
40 | KS | 3.27 | (0.65) | 3.19 | (1.51) | 3.39 | (0.88) |
Random | 11.01 | (1.10) | 11.01 | (1.34) | 10.91 | (1.28) | |
Sdec | 2.52 | (1.31) | 2.36 | (1.17) | 2.29 | (1.03) | |
50 | KS | 5.25 | (1.71) | 4.70 | (0.99) | 5.47 | (1.09) |
Random | 11.07 | (1.11) | 13.01 | (1.34) | 13.91 | (1.28) | |
Sdec | 4.32 | (1.96) | 3.87 | (1.76) | 4.14 | (1.60) |
% Missing | Method | MCAR | MAR | MNAR | ||||||
---|---|---|---|---|---|---|---|---|---|---|
Ibi | Makurdi | Umaisha | Ibi | Makurdi | Umaisha | Ibi | Makurdi | Umaisha | ||
10 | RF | 22.51 | 21.24 | 50.24 | 21.02 | 26.02 | 53.51 | 25.80 | 31.33 | 66.74 |
kNN | 17.17 | 16.22 | 36.61 | 19.55 | 15.39 | 42.42 | 19.11 | 19.47 | 48.17 | |
MF | 14.60 | 19.24 | 37.71 | 17.25 | 19.13 | 35.06 | 20.18 | 19.67 | 54.26 | |
PMM | 25.98 | 24.21 | 47.57 | 26.71 | 25.95 | 55.31 | 26.35 | 24.96 | 58.47 | |
20 | RF | 36.81 | 36.56 | 81.04 | 34.71 | 34.15 | 85.84 | 39.21 | 32.43 | 76.44 |
kNN | 23.84 | 25.51 | 73.77 | 28.48 | 24.92 | 64.24 | 32.97 | 33.66 | 70.32 | |
MF | 26.76 | 28.60 | 62.10 | 25.00 | 28.30 | 56.36 | 28.22 | 32.90 | 76.22 | |
PMM | 33.16 | 39.17 | 67.82 | 34.28 | 38.65 | 87.78 | 41.99 | 41.25 | 94.16 | |
30 | RF | 45.66 | 47.17 | 99.47 | 44.66 | 43.07 | 100.85 | 49.17 | 43.93 | 106.59 |
kNN | 31.86 | 36.19 | 79.21 | 33.11 | 37.80 | 74.05 | 38.69 | 38.79 | 83.80 | |
MF | 33.19 | 39.19 | 85.16 | 38.45 | 35.64 | 94.59 | 39.62 | 39.89 | 91.93 | |
PMM | 42.01 | 49.13 | 103.32 | 42.58 | 44.98 | 97.24 | 51.59 | 48.11 | 115.20 | |
40 | RF | 49.67 | 56.49 | 123.15 | 51.36 | 54.03 | 118.37 | 50.94 | 56.74 | 129.32 |
kNN | 36.40 | 46.46 | 94.26 | 41.16 | 43.94 | 92.94 | 43.67 | 46.00 | 97.40 | |
MF | 39.69 | 46.75 | 101.41 | 36.90 | 43.16 | 98.50 | 46.99 | 46.30 | 102.40 | |
PMM | 57.15 | 61.82 | 127.80 | 48.60 | 63.14 | 117.17 | 58.36 | 55.54 | 129.24 | |
50 | RF | 59.70 | 64.19 | 136.39 | 62.00 | 62.59 | 139.55 | 56.40 | 58.46 | 147.40 |
kNN | 44.69 | 48.28 | 109.82 | 45.45 | 51.10 | 117.73 | 49.19 | 54.01 | 111.92 | |
MF | 45.76 | 52.00 | 106.10 | 49.49 | 46.83 | 106.82 | 49.75 | 53.94 | 111.39 | |
PMM | 61.52 | 69.37 | 140.91 | 57.11 | 67.09 | 150.09 | 66.30 | 69.90 | 134.70 |
% Missing | Method | MCAR | MAR | MNAR | ||||||
---|---|---|---|---|---|---|---|---|---|---|
Ibi | Makurdi | Umaisha | Ibi | Makurdi | Umaisha | Ibi | Makurdi | Umaisha | ||
10 | RF | 0.0092 | 0.0062 | 0.0287 | 0.0079 | 0.0081 | 0.0526 | 0.0073 | 0.0070 | 0.0229 |
kNN | 0.0062 | 0.0045 | 0.0348 | 0.0075 | 0.0041 | 0.0320 | 0.0055 | 0.0045 | 0.0181 | |
MF | 0.0050 | 0.0054 | 0.0206 | 0.0062 | 0.0057 | 0.0249 | 0.0054 | 0.0043 | 0.0168 | |
PMM | 0.0094 | 0.0065 | 0.0617 | 0.0111 | 0.0073 | 0.0407 | 0.0060 | 0.0050 | 0.0143 | |
20 | RF | 0.0178 | 0.0131 | 0.0877 | 0.0169 | 0.0123 | 0.1907 | 0.0143 | 0.0079 | 0.0232 |
kNN | 0.0118 | 0.0094 | 0.0925 | 0.0138 | 0.0087 | 0.0902 | 0.0134 | 0.0104 | 0.0336 | |
MF | 0.0105 | 0.0103 | 0.0507 | 0.0119 | 0.0109 | 0.0610 | 0.0115 | 0.0099 | 0.0273 | |
PMM | 0.0159 | 0.0155 | 0.1973 | 0.0173 | 0.0133 | 0.1089 | 0.0171 | 0.0122 | 0.0401 | |
30 | RF | 0.0255 | 0.0210 | 0.1192 | 0.0266 | 0.0181 | 0.1654 | 0.0228 | 0.0161 | 0.0556 |
kNN | 0.0177 | 0.0154 | 0.0967 | 0.0178 | 0.0172 | 0.1260 | 0.0174 | 0.0148 | 0.0396 | |
MF | 0.0206 | 0.0170 | 0.1554 | 0.0230 | 0.0159 | 0.1524 | 0.0191 | 0.0145 | 0.0465 | |
PMM | 0.0225 | 0.0224 | 0.2060 | 0.0257 | 0.0215 | 0.1519 | 0.0233 | 0.0179 | 0.0927 | |
40 | RF | 0.0337 | 0.0271 | 0.1634 | 0.0357 | 0.0270 | 0.2377 | 0.0292 | 0.0242 | 0.0793 |
kNN | 0.0239 | 0.0225 | 0.1347 | 0.0282 | 0.0218 | 0.1942 | 0.0233 | 0.0197 | 0.0863 | |
MF | 0.0279 | 0.0238 | 0.1616 | 0.0224 | 0.0218 | 0.2269 | 0.0253 | 0.0195 | 0.0800 | |
PMM | 0.0388 | 0.0342 | 0.1859 | 0.0330 | 0.0345 | 0.2118 | 0.0352 | 0.0239 | 0.1587 | |
50 | RF | 0.0422 | 0.0358 | 0.2513 | 0.0452 | 0.0351 | 0.2330 | 0.0347 | 0.0275 | 0.1258 |
kNN | 0.0346 | 0.0251 | 0.1972 | 0.0344 | 0.0286 | 0.2434 | 0.0293 | 0.0257 | 0.1129 | |
MF | 0.0326 | 0.0298 | 0.2098 | 0.0393 | 0.0252 | 0.1895 | 0.0315 | 0.0260 | 0.1061 | |
PMM | 0.0505 | 0.0425 | 0.3913 | 0.0398 | 0.0376 | 0.2812 | 0.0435 | 0.0344 | 0.1089 |
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Umar, N.; Gray, A. Comparing Single and Multiple Imputation Approaches for Missing Values in Univariate and Multivariate Water Level Data. Water 2023, 15, 1519. https://doi.org/10.3390/w15081519
Umar N, Gray A. Comparing Single and Multiple Imputation Approaches for Missing Values in Univariate and Multivariate Water Level Data. Water. 2023; 15(8):1519. https://doi.org/10.3390/w15081519
Chicago/Turabian StyleUmar, Nura, and Alison Gray. 2023. "Comparing Single and Multiple Imputation Approaches for Missing Values in Univariate and Multivariate Water Level Data" Water 15, no. 8: 1519. https://doi.org/10.3390/w15081519
APA StyleUmar, N., & Gray, A. (2023). Comparing Single and Multiple Imputation Approaches for Missing Values in Univariate and Multivariate Water Level Data. Water, 15(8), 1519. https://doi.org/10.3390/w15081519