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IJAZ UL HAQ
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Year
A deep hybrid model for recommendation by jointly leveraging ratings, reviews and metadata information
ZY Khan, Z Niu, AS Nyamawe, I ul Haq
Engineering Applications of Artificial Intelligence 97, 104066, 2021
182021
CAMELS-Chem: Augmenting CAMELS (Catchment Attributes and Meteorology for Large-sample Studies) with atmospheric and stream water chemistry data
G Sterle, J Perdrial, DW Kincaid, KL Underwood, DM Rizzo, IU Haq, L Li, ...
Hydrology and Earth System Sciences Discussions 2022, 1-23, 2022
122022
Peak Anomaly Detection from Environmental Sensor-Generated Watershed Time Series Data
BS Lee, JC Kaufmann, DM Rizzo, IU Haq
Annual International Conference on Information Management and Big Data, 142-157, 2022
32022
Diverse misinformation: Impacts of human biases on detection of deepfakes on networks
J Lovato, L Hébert-Dufresne, J St-Onge, R Harp, GS Lopez, SP Rogers, ...
arXiv preprint arXiv:2210.10026, 2022
32022
Evaluating and Enhancing the Robustness of Sustainable Neural Relationship Classifiers Using Query-Efficient Black-Box Adversarial Attacks
IU Haq, ZY Khan, A Ahmad, B Hayat, A Khan, YE Lee, KI Kim
Sustainability 13 (11), 5892, 2021
32021
An automated machine learning approach for detecting anomalous peak patterns in time series data from a research watershed in the Northeastern United States critical zone
IU Haq, BS Lee, DM Rizzo, JN Perdrial
Machine Learning with Applications 16, 100543, 2024
22024
CAMELS-Chem: augmenting CAMELS (Catchment Attributes and Meteorology for Large-sample Studies) with atmospheric and stream water chemistry data
G Sterle, J Perdrial, DW Kincaid, KL Underwood, DM Rizzo, IU Haq, L Li, ...
Hydrology and Earth System Sciences 28 (3), 611-630, 2024
12024
TransNAS-TSAD: Harnessing Transformers for Multi-Objective Neural Architecture Search in Time Series Anomaly Detection
IU Haq, BS Lee
arXiv preprint arXiv:2311.18061, 2023
12023
From Ashes to Insights: Dissecting Ecosystem Dynamics Before and After Wildfire in Illilouette Creek Basin
UL Ijaz, G Boisrame, BS Lee, K Underwood, JN Perdrial
AGU23, 2023
2023
Impact of changes in water availability on water quality: a data-driven investigation of Critical Zone subsurface and vegetation interactions
N Hicks, L Li, B Stewart, K Underwood, UL Ijaz, DW Kincaid, L Lowman, ...
AGU23, 2023
2023
Peak Anomaly Detection using Critical Zone Time Series Data: Knowledge-Engineering and Deep-Learning
BS Lee, JC Kaufmann, JB Shanley, DM Rizzo, JN Perdrial, IU Haq
AGU Fall Meeting Abstracts 2022, H31E-06, 2022
2022
Leveraging Catchment Attributes to Explain Patterns of Concentration-Discharge Relationships Across the Contiguous United States
DW Kincaid, K Underwood, SD Hamshaw, I Ul Haq, L Li, DM Rizzo, ...
AGU Fall Meeting Abstracts 2022, H32S-1150, 2022
2022
Automated Machine Learning Approach to Supervised Anomaly Detection from Critical Zone Watershed Sensor-Generated Time Series Data
IU Haq, BS Lee, DM Rizzo, JN Perdrial, JB Shanley
AGU Fall Meeting Abstracts 2022, H22P-1031, 2022
2022
From pattern to process and process to pattern: insights on data-driven Critical Zone research from the Big Data collaborative network cluster
JN Perdrial, K Underwood, S Swami, BS Lee, IU Haq, D Kincaid, ...
2022 Goldschmidt Conference, 2022
2022
Lifelikeness is in the eye of the beholder: demographics of deepfake detection and their impacts on online social networks
J Lovato, L Hébert-Dufresne, J St-Onge, GS Lopez, SP Rogers, R Harp, ...
2022
Why Critical Zone (CZ) science needs team science: insights from the big data CZ network cluster
J Perdrial, D Kincaid, D Wheaton, L Walls, I Ul Haq, D Rizzo, S Hamshaw, ...
AGU Fall Meeting Abstracts 2021, EP45H-1597, 2021
2021
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