Inspired by the success of deep learning techniques in Natural Language Processing (NLP), this dissertation tackles the domain-specific text mining problems for which the generic deep learning approaches would fail. More specifically, the domain-specific problems are: (1) success prediction in crowdfunding, (2) variants identification in biomedical literature, and (3) text data augmentation for domains with low-resources. In the first part, transfer learning in a multimodal perspective is utilized to facilitate solving the project success prediction on the crowdfunding application. Even though the information in a project profile can be of different modalities such as text, images, and metadata, most existing prediction approaches leverage ...
Part 1: Keynote PresentationsInternational audienceIn machine learning and data mining, we often enc...
Deep learning method, convolutional neural network (CNN) outperforms conventional machine learning m...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
Inspired by the success of deep learning techniques in Natural Language Processing (NLP), this disse...
In Machine Learning, a good model is one that generalizes from training data and makes accurate pred...
Transfer learning is an emerging technique in machine learning, by which we can solve a new task wit...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
Over the last decade, the state-of-the-art in text mining has moved towards the adoption of machine...
Deep Neural Networks (DNNs) have achieved great performance in computer vision tasks. However, the p...
In recent years, many applications are using various forms of deep learning models. Such methods are...
Recent researches in natural language processing have leveraged attention-based models to produce st...
Machine learning models cannot easily adapt to new domains and applications. This drawback becomes d...
As the web evolves even faster than expected, the exponential growth of data becomes overwhelming. T...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Deep learning has become the most popular approach in machine learning in recent years. The reason l...
Part 1: Keynote PresentationsInternational audienceIn machine learning and data mining, we often enc...
Deep learning method, convolutional neural network (CNN) outperforms conventional machine learning m...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
Inspired by the success of deep learning techniques in Natural Language Processing (NLP), this disse...
In Machine Learning, a good model is one that generalizes from training data and makes accurate pred...
Transfer learning is an emerging technique in machine learning, by which we can solve a new task wit...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
Over the last decade, the state-of-the-art in text mining has moved towards the adoption of machine...
Deep Neural Networks (DNNs) have achieved great performance in computer vision tasks. However, the p...
In recent years, many applications are using various forms of deep learning models. Such methods are...
Recent researches in natural language processing have leveraged attention-based models to produce st...
Machine learning models cannot easily adapt to new domains and applications. This drawback becomes d...
As the web evolves even faster than expected, the exponential growth of data becomes overwhelming. T...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Deep learning has become the most popular approach in machine learning in recent years. The reason l...
Part 1: Keynote PresentationsInternational audienceIn machine learning and data mining, we often enc...
Deep learning method, convolutional neural network (CNN) outperforms conventional machine learning m...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...