Mudasir Ahmad Wani (@mudasirahmadwani)
  • Stars
    star
    13
  • Global Rank 834,067 (Top 29 %)
  • Followers 11
  • Following 3
  • Registered over 6 years ago
  • Most used languages
    Python
    66.7 %
  • Location πŸ‡³πŸ‡΄ Norway
  • Country Total Rank 3,069
  • Country Ranking
    Python
    903

Top repositories

1

MoodBook

MoodBook is an emotion dictionary based on the eight basic emotions including fear, anger, sad, joy, disgust, surprise, trust, and anticipation.
Python
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2

Facebook-Dataset-Mudasir-

Jupyter Notebook
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3

User-Emotion-Analysis-in-Conflicting-verses-Non-Conflicting-Regions-using-Online-Social-Networks

In this study, we focus on the eight basic emotions, namely fear, anger, sadness, joy, surprise, disgust, trust, and anticipation proposed by Pultchik [12]. We designed and implemented our own lexicon by extending one of the well-known lexicons, namely EmoLex[13] by introducing new mood words extracted from the user content. The posts of 100 users from each region (Delhi and Kashmir) have been analyzed in order to add the most frequent mood words to the new dictionary.
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4

Emotion-based-Gender-Prediction-in-OSNs

This project aims to investigate the potential of emotion-based features in the gender identification task, which has been unnoticed by researchers so far. The experimental study is carried out on the texts of two widely used OSNs, Facebook and Twitter.
Python
1
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5

IMcrawler

Obtaining the desired dataset is still a prime challenge faced by researchers while analyzing Online Social Network (OSN) sites. Application Programming Interfaces (APIs) provided by OSN service providers for retrieving data impose several unavoidable restrictions which make it difficult to get a desirable dataset. In this paper, we present an iMacros technology-based data crawler called IMcrawler, capable of collecting every piece of information which is accessible through a browser from the Facebook website within the legal framework which permits access to publicly shared user content on OSNs. The proposed crawler addresses most of the challenges allied with web data extraction approaches and most of the APIs provided by OSN service providers. Two broad sections have been extracted from Facebook user profiles, namely, Personal Information and Wall Activities. The present work is the first attempt towards providing the detailed description of crawler design for the Facebook website.
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