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IJAZ UL HAQ
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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
172021
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
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
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
22022
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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