A Hidden Markov Model Based System for Entity Extraction from Social Media English Text at FIRE 2015

12/12/2015
by   Kamal Sarkar, et al.
0

This paper presents the experiments carried out by us at Jadavpur University as part of the participation in FIRE 2015 task: Entity Extraction from Social Media Text - Indian Languages (ESM-IL). The tool that we have developed for the task is based on Trigram Hidden Markov Model that utilizes information like gazetteer list, POS tag and some other word level features to enhance the observation probabilities of the known tokens as well as unknown tokens. We submitted runs for English only. A statistical HMM (Hidden Markov Models) based model has been used to implement our system. The system has been trained and tested on the datasets released for FIRE 2015 task: Entity Extraction from Social Media Text - Indian Languages (ESM-IL). Our system is the best performer for English language and it obtains precision, recall and F-measures of 61.96, 39.46 and 48.21 respectively.

READ FULL TEXT
research
01/06/2016

Part-of-Speech Tagging for Code-mixed Indian Social Media Text at ICON 2015

This paper discusses the experiments carried out by us at Jadavpur Unive...
research
02/15/2018

JU_KS@SAIL_CodeMixed-2017: Sentiment Analysis for Indian Code Mixed Social Media Texts

This paper reports about our work in the NLP Tool Contest @ICON-2017, sh...
research
10/31/2016

Experiments with POS Tagging Code-mixed Indian Social Media Text

This paper presents Centre for Development of Advanced Computing Mumbai'...
research
07/31/2018

RiTUAL-UH at TRAC 2018 Shared Task: Aggression Identification

This paper presents our system for "TRAC 2018 Shared Task on Aggression ...
research
12/11/2017

Social Media Writing Style Fingerprint

We present our approach for computer-aided social media text authorship ...
research
11/17/2016

Towards the Modeling of Behavioral Trajectories of Users in Online Social Media

In this paper, we introduce a methodology that allows to model behaviora...

Please sign up or login with your details

Forgot password? Click here to reset