Emotion Classification of Duterte Administration Tweets Using Hybrid Approach

Author(s):  
Randell Gimenez ◽  
Melvin Gaviola ◽  
Mary Jane Sabellano ◽  
Ken Gorro
Electronics ◽  
2020 ◽  
Vol 9 (8) ◽  
pp. 1317 ◽  
Author(s):  
Kristína Machová ◽  
Martin Mikula ◽  
Xiaoying Gao ◽  
Marian Mach

This work belongs to the field of sentiment analysis; in particular, to opinion and emotion classification using a lexicon-based approach. It solves several problems related to increasing the effectiveness of opinion classification. The first problem is related to lexicon labelling. Human labelling in the field of emotions is often too subjective and ambiguous, and so the possibility of replacement by automatic labelling is examined. This paper offers experimental results using a nature-inspired algorithm—particle swarm optimization—for labelling. This optimization method repeatedly labels all words in a lexicon and evaluates the effectiveness of opinion classification using the lexicon until the optimal labels for words in the lexicon are found. The second problem is that the opinion classification of texts which do not contain words from the lexicon cannot be successfully done using the lexicon-based approach. Therefore, an auxiliary approach, based on a machine learning method, is integrated into the method. This hybrid approach is able to classify more than 99% of texts and achieves better results than the original lexicon-based approach. The final hybrid model can be used for emotion analysis in human–robot interactions.


Author(s):  
Hussah Nasser Aleisa

<p><span id="docs-internal-guid-c2be589c-7fff-55df-f7fc-a27d9748d2d4"><span>Human emotion recognition</span><span> is an upcoming research field of human computer interaction based on facial gestures and is being used for real-time analysis in classifying cognitive affective states from a facial video data. Since computers have become an integral part of life, many researchers are using emotion recognition and classification of data based on audio and text. But these approaches offer limited accuracy and relevance in emotion classification. Therefore we have introduced and analyzed a hybrid approach which could outperform the existing strategies that uses an innovative approach supported by selection of audio and video data characteristics for classification. The research uses SVM for classifying the data using audio-visual savee database and the results obtained show maximum classification accuracy with respect to audio data about 91.6 could be improved to 99.2% after the application of hybrid strategy. </span></span></p>


Complexity ◽  
2021 ◽  
Vol 2021 ◽  
pp. 1-9
Author(s):  
Huiping Jiang ◽  
Demeng Wu ◽  
Rui Jiao ◽  
Zongnan Wang

Electroencephalography (EEG) is the measurement of neuronal activity in different areas of the brain through the use of electrodes. As EEG signal technology has matured over the years, it has been applied in various methods to EEG emotion recognition, most significantly including the use of convolutional neural network (CNN). However, these methods are still not ideal, and shortcomings have been found in the results of some models of EEG feature extraction and classification. In this study, two CNN models were selected for the extraction and classification of preprocessed data, namely, common spatial patterns- (CSP-) CNN and wavelet transform- (WT-) CNN. Using the CSP-CNN, we first used the common space model to reduce dimensionality and then applied the CNN directly to extract and classify the features of the EEG; while, with the WT-CNN model, we used the wavelet transform to extract EEG features, thereafter applying the CNN for classification. The EEG classification results of these two classification models were subsequently analyzed and compared, with the average classification accuracy of the CSP-CNN model found to be 80.56%, and the average classification accuracy of the WT-CNN model measured to 86.90%. Thus, the findings of this study show that the average classification accuracy of the WT-CNN model was 6.34% higher than that of the CSP-CNN.


2021 ◽  
pp. 705-722
Author(s):  
Simon Islam ◽  
Animesh Chandra Roy ◽  
Mohammad Shamsul Arefin ◽  
Sonia Afroz

Author(s):  
Alexander Woywodt ◽  
Diana Chiu

The key features of glomerular diseases—haematuria, proteinuria, loss of glomerular filtration rate, and hypertension—were recognized in the nineteenth century, and some earlier, but Richard Bright is usually given credit for synthesizing the concepts of renal disease, and glomerulonephritis came under the heading of Bright’s disease for almost a century. Separation into different types was based on first clinical syndromes, but in the early twentieth century, pathological description was improving and with the introduction of percutaneous renal biopsies in the 1950s, in the 1960s histopathological definitions assumed the ascendancy. A unifying classification of glomerular disease remains work in progress. Current classifications are pathologically based but increasingly include the results of other investigations (including genotype and a variety of immunological and other tests). This chapter follows this pragmatic, hybrid approach, categorizing glomerular disease by pattern on renal biopsy except where aetiological factors are clearly identified (e.g. HIV nephropathy), or associated multisystem disease is defined (e.g. lupus nephritis), or the immunopathogenesis is well characterized (e.g. antiglomerular basement membrane disease).


2018 ◽  
Vol 9 (2) ◽  
pp. 1-22 ◽  
Author(s):  
Rafiya Jan ◽  
Afaq Alam Khan

Social networks are considered as the most abundant sources of affective information for sentiment and emotion classification. Emotion classification is the challenging task of classifying emotions into different types. Emotions being universal, the automatic exploration of emotion is considered as a difficult task to perform. A lot of the research is being conducted in the field of automatic emotion detection in textual data streams. However, very little attention is paid towards capturing semantic features of the text. In this article, the authors present the technique of semantic relatedness for automatic classification of emotion in the text using distributional semantic models. This approach uses semantic similarity for measuring the coherence between the two emotionally related entities. Before classification, data is pre-processed to remove the irrelevant fields and inconsistencies and to improve the performance. The proposed approach achieved the accuracy of 71.795%, which is competitive considering as no training or annotation of data is done.


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