A probabilistic clustering model for hate speech classification in twitter

2021 ◽  
Vol 173 ◽  
pp. 114762
Author(s):  
Femi Emmanuel Ayo ◽  
Olusegun Folorunso ◽  
Friday Thomas Ibharalu ◽  
Idowu Ademola Osinuga ◽  
Adebayo Abayomi-Alli
Author(s):  
Ricardo Martins ◽  
Marco Gomes ◽  
Jose Joao Almeida ◽  
Paulo Novais ◽  
Pedro Henriques

2020 ◽  
Author(s):  
Kaushik Amar Das ◽  
Arup Baruah ◽  
Ferdous Ahmed Barbhuiya ◽  
Kuntal Dey

Sensors ◽  
2020 ◽  
Vol 20 (10) ◽  
pp. 2799
Author(s):  
Stanisław Hożyń ◽  
Jacek Zalewski

Autonomous surface vehicles (ASVs) are a critical part of recent progressive marine technologies. Their development demands the capability of optical systems to understand and interpret the surrounding landscape. This capability plays an important role in the navigation of coastal areas a safe distance from land, which demands sophisticated image segmentation algorithms. For this purpose, some solutions, based on traditional image processing and neural networks, have been introduced. However, the solution of traditional image processing methods requires a set of parameters before execution, while the solution of a neural network demands a large database of labelled images. Our new solution, which avoids these drawbacks, is based on adaptive filtering and progressive segmentation. The adaptive filtering is deployed to suppress weak edges in the image, which is convenient for shoreline detection. Progressive segmentation is devoted to distinguishing the sky and land areas, using a probabilistic clustering model to improve performance. To verify the effectiveness of the proposed method, a set of images acquired from the vehicle’s operative camera were utilised. The results demonstrate that the proposed method performs with high accuracy regardless of distance from land or weather conditions.


Apart from this there are many domains including medical, voice synthesis, hate speech classification and other custom applications where classification of speech plays an important role. The conventional techniques of speech processing and classification works on a small data set also provide lower accuracy of the classification. This paper introduces a learning model using neural network (NN) for the large dataset machine training and classification using critical feature analysis for the pattern of speech spectrogram and waveforms. The performance evaluation of the proposed training model for the speech classification is validated on a single CPU and found to achieve (12-82) % of accuracy in just 5-epochs and also continuously decreases the loss at successive iteration of the epochs. This method provides learning model framework for the speech processing and classification for a very large dataset.


2021 ◽  
pp. 135-146
Author(s):  
Ashwin Geet D’Sa ◽  
Irina Illina ◽  
Dominique Fohr ◽  
Dietrich Klakow ◽  
Dana Ruiter

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