Search Results for author: Mohammad Arif Ul Alam

Found 15 papers, 0 papers with code

Unbiased Pain Assessment through Wearables and EHR Data: Multi-attribute Fairness Loss-based CNN Approach

no code implementations3 Jul 2023 Sharmin Sultana, Md Mahmudur Rahman, Atqiya Munawara Mahi, Shao-Hsien Liu, Mohammad Arif Ul Alam

The combination of diverse health data (IoT, EHR, and clinical surveys) and scalable-adaptable Artificial Intelligence (AI), has enabled the discovery of physical, behavioral, and psycho-social indicators of pain status.

Attribute Fairness

Internet of Things Fault Detection and Classification via Multitask Learning

no code implementations3 Jul 2023 Mohammad Arif Ul Alam

This paper presents a comprehensive investigation into developing a fault detection and classification system for real-world IIoT applications.

Classification Fault Detection +1

Recent Trend of Nanotechnology Applications to Improve Bio-accessibility of Lycopene by Nanocarrier: A Review

no code implementations25 Jan 2023 Mohammad Anwar Ul Alam, Mhamuda Khatun, Mohammad Arif Ul Alam

By manipulating the size or hydrodynamic diameter, zeta potential value or stability, polydispersity index or homogeneity and functional activity or retention of antioxidant properties observed to be the most prominent physicochemical properties to evaluate beneficial effect of implementation of nanotechnology on bioaccessibility study.

Semi-Supervised Domain Adaptation with Auto-Encoder via Simultaneous Learning

no code implementations18 Oct 2022 Md Mahmudur Rahman, Rameswar Panda, Mohammad Arif Ul Alam

We present a new semi-supervised domain adaptation framework that combines a novel auto-encoder-based domain adaptation model with a simultaneous learning scheme providing stable improvements over state-of-the-art domain adaptation models.

Domain Adaptation Semi-supervised Domain Adaptation

College Student Retention Risk Analysis From Educational Database using Multi-Task Multi-Modal Neural Fusion

no code implementations11 Sep 2021 Mohammad Arif Ul Alam

We develop a Multimodal Spatiotemporal Neural Fusion network for Multi-Task Learning (MSNF-MTCL) to predict 5 important students' retention risks: future dropout, next semester dropout, type of dropout, duration of dropout and cause of dropout.

Document Embedding Fairness +1

PALMAR: Towards Adaptive Multi-inhabitant Activity Recognition in Point-Cloud Technology

no code implementations22 Jun 2021 Mohammad Arif Ul Alam, Md Mahmudur Rahman, Jared Q Widberg

With the advancement of deep neural networks and computer vision-based Human Activity Recognition, employment of Point-Cloud Data technologies (LiDAR, mmWave) has seen a lot interests due to its privacy preserving nature.

Clustering Domain Adaptation +3

Estimating Heterogeneous Causal Effect of Polysubstance Usage on Drug Overdose from Large-Scale Electronic Health Record

no code implementations15 May 2021 Vaishali Mahipal, Mohammad Arif Ul Alam

We apply our framework to answer a critical question, can concurrent usage of benzodiazepines and opioids have heterogeneous causal effects on the opioid overdose epidemic?

Causal Inference

Activity-Aware Deep Cognitive Fatigue Assessment using Wearables

no code implementations5 May 2021 Mohammad Arif Ul Alam

Cognitive fatigue has been a common problem among workers which has become an increasing global problem since the emergence of COVID-19 as a global pandemic.

Activity Recognition

LAXARY: A Trustworthy Explainable Twitter Analysis Model for Post-Traumatic Stress Disorder Assessment

no code implementations16 Mar 2020 Mohammad Arif Ul Alam, Dhawal Kapadia

Veteran mental health is a significant national problem as large number of veterans are returning from the recent war in Iraq and continued military presence in Afghanistan.

BIG-bench Machine Learning Explainable Artificial Intelligence (XAI)

Reflecting After Learning for Understanding

no code implementations18 Oct 2019 Lee Martie, Mohammad Arif Ul Alam, Gaoyuan Zhang, Ryan R. Anderson

Using the framework on images from ImageNet, we demonstrate systems that unify 41% to 46% of predictions in general and unify 67% to 75% of predictions when the systems can explain their conceptual differences.

General Classification Image Classification

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