Search Results for author: Masoud Monajatipoor

Found 8 papers, 5 papers with code

LLMs in Biomedicine: A study on clinical Named Entity Recognition

no code implementations10 Apr 2024 Masoud Monajatipoor, Jiaxin Yang, Joel Stremmel, Melika Emami, Fazlolah Mohaghegh, Mozhdeh Rouhsedaghat, Kai-Wei Chang

Large Language Models (LLMs) demonstrate remarkable versatility in various NLP tasks but encounter distinct challenges in biomedicine due to medical language complexities and data scarcity.

named-entity-recognition Named Entity Recognition +2

How well can Text-to-Image Generative Models understand Ethical Natural Language Interventions?

1 code implementation27 Oct 2022 Hritik Bansal, Da Yin, Masoud Monajatipoor, Kai-Wei Chang

To this end, we introduce an Ethical NaTural Language Interventions in Text-to-Image GENeration (ENTIGEN) benchmark dataset to evaluate the change in image generations conditional on ethical interventions across three social axes -- gender, skin color, and culture.

Cultural Vocal Bursts Intensity Prediction Text-to-Image Generation

MAGIC: Mask-Guided Image Synthesis by Inverting a Quasi-Robust Classifier

1 code implementation23 Sep 2022 Mozhdeh Rouhsedaghat, Masoud Monajatipoor, C. -C. Jay Kuo, Iacopo Masi

We offer a method for one-shot mask-guided image synthesis that allows controlling manipulations of a single image by inverting a quasi-robust classifier equipped with strong regularizers.

Image Generation

GeoMLAMA: Geo-Diverse Commonsense Probing on Multilingual Pre-Trained Language Models

1 code implementation24 May 2022 Da Yin, Hritik Bansal, Masoud Monajatipoor, Liunian Harold Li, Kai-Wei Chang

In this paper, we introduce a benchmark dataset, Geo-Diverse Commonsense Multilingual Language Models Analysis (GeoMLAMA), for probing the diversity of the relational knowledge in multilingual PLMs.

Language Modelling

Successive Subspace Learning: An Overview

no code implementations27 Feb 2021 Mozhdeh Rouhsedaghat, Masoud Monajatipoor, Zohreh Azizi, C. -C. Jay Kuo

Successive Subspace Learning (SSL) offers a light-weight unsupervised feature learning method based on inherent statistical properties of data units (e. g. image pixels and points in point cloud sets).

Cannot find the paper you are looking for? You can Submit a new open access paper.