Chanchal Suman


2020

pdf bib
A Multi-modal Personality Prediction System
Chanchal Suman | Aditya Gupta | Sriparna Saha | Pushpak Bhattacharyya
Proceedings of the 17th International Conference on Natural Language Processing (ICON)

Automatic prediction of personality traits has many real-life applications, e.g., in forensics, recommender systems, personalized services etc.. In this work, we have proposed a solution framework for solving the problem of predicting the personality traits of a user from videos. Ambient, facial and the audio features are extracted from the video of the user. These features are used for the final output prediction. The visual and audio modalities are combined in two different ways: averaging of predictions obtained from the individual modalities, and concatenation of features in multi-modal setting. The dataset released in Chalearn-16 is used for evaluating the performance of the system. Experimental results illustrate that it is possible to obtain better performance with a hand full of images, rather than using all the images present in the video

pdf bib
D-Coref: A Fast and Lightweight Coreference Resolution Model using DistilBERT
Chanchal Suman | Jeetu Kumar | Sriparna Saha | Pushpak Bhattacharyya
Proceedings of the 17th International Conference on Natural Language Processing (ICON)

Smart devices are often deployed in some edge-devices, which require quality solutions in limited amount of memory usage. In most of the user-interaction based smart devices, coreference resolution is often required. Keeping this in view, we have developed a fast and lightweight coreference resolution model which meets the minimum memory requirement and converges faster. In order to generate the embeddings for solving the task of coreference resolution, DistilBERT, a light weight BERT module is utilized. DistilBERT consumes less memory (only 60% of memory in comparison to BERT-based heavy model) and it is suitable for deployment in edge devices. DistilBERT embedding helps in 60% faster convergence with an accuracy compromise of 2.59%, and 6.49% with respect to its base model and current state-of-the-art, respectively.