رکورد قبلیرکورد بعدی

" Automatic Emotion Recognition in English and Arabic Text "


Document Type : Latin Dissertation
Language of Document : English
Record Number : 1110328
Doc. No : TLpq2482672232
Main Entry : Al-Mahdawi, Amer
Title & Author : Automatic Emotion Recognition in English and Arabic Text\ Al-Mahdawi, Amer
College : Bangor University (United Kingdom)
Date : 2019
student score : 2019
Degree : Ph.D.
Page No : 163
Abstract : This study investigated the automatic recognition of emotion in English<br/>and Arabic text. We perform experiments with a new method of classi-<br/>fication for recognising emotions using the Prediction by Partial Matching<br/>(PPM) character-based text compression scheme. These experiments involve<br/>both document level classification (whether a text of document is emotional<br/>or not) and also fine-grained classification such as recognising Ekman's six<br/>basic emotions (Anger, Disgust, Fear, Happiness, Sadness, Surprise). Experimental results with three English datasets (the LiveJournal's blogs dataset, Aman's blogs dataset, and Alm's fairy tales dataset) show that the new<br/>method signicantly outperforms the traditional word-based text classification<br/>methods. The results show that the PPM compression-based classification method is able to distinguish between emotional and non-emotional<br/>text with high accuracy, between texts involving Happiness and Sadness emotions (with 79.1% accuracy for Aman's dataset and 76.9% for Alm's datasets)<br/>and texts involving Ekman's six basic emotions for the LiveJournal dataset<br/>(87.4% accuracy). Results also show that the method outperforms traditional<br/>feature-based classifiers such as Naive Bayes and SMO in most cases<br/>in terms of accuracy, precision, recall and F-measure. In order to see how well the classifier performs on another language not related to English and also in order to create another Arabic benchmark corpus for future emotion classification experiments, we created a new Iraqi Arabic Emotion Corpus (IAEC) dataset annotated according to Ekman's basic emotions. This dataset is composed of Facebook posts written in the Iraqi dialect. We evaluated the quality of this dataset using four external judges which resulted in an average inter-annotation agreement of 0.751. We then explored six different supervised machine learning methods to test the new dataset. We used standard Weka classifiers ZeroR, J48, Naive Bayes, Multinomial Naive Bayes for Text and SMO. We compared these results with our compression-based classifier PPM. Our study reveals that the PPM classifier significantly outperforms the other classifiers for the new dataset achieving the highest results in terms of accuracy, precision, recall, and Fmeasure. <br/>We also designed and investigated another new classification technique<br/>motivated by information divergence to recognize Ekman's emotions in text.<br/>We used the three datasets written in the English Language and the one in<br/>the Arabic Language to evaluate the new method. The new method was able<br/>to achieve a better result for Alm's dataset in terms of accuracy, precision,<br/>recall and F-measure than PPM and standard Weka classifiers. The new<br/>method also outperforms all standard Weka classifiers for all four datasets.<br/>Finally, these results show that our proposed technique is promising as an<br/>alternative technique for English and Arabic text categorization in general.
Subject : Computer science
: Electrical engineering
کپی لینک

پیشنهاد خرید
پیوستها
عنوان :
نام فایل :
نوع عام محتوا :
نوع ماده :
فرمت :
سایز :
عرض :
طول :
2482672232_20882.pdf
2482672232.pdf
پایان نامه لاتین
متن
application/pdf
3.79 MB
85
85
نظرسنجی
نظرسنجی منابع دیجیتال

1 - آیا از کیفیت منابع دیجیتال راضی هستید؟