Standard

Social Mapping Based on Sentiment Analysis of Comments in Social Media. / Chizhik, Anna ; Melnikova, Svetlana ; Zakharov, Victor .

в: International Journal of Open Information Technologies, Том 10, № 11, 2022, стр. 75-80.

Результаты исследований: Научные публикации в периодических изданияхстатьяРецензирование

Harvard

Chizhik, A, Melnikova, S & Zakharov, V 2022, 'Social Mapping Based on Sentiment Analysis of Comments in Social Media', International Journal of Open Information Technologies, Том. 10, № 11, стр. 75-80.

APA

Chizhik, A., Melnikova, S., & Zakharov, V. (2022). Social Mapping Based on Sentiment Analysis of Comments in Social Media. International Journal of Open Information Technologies, 10(11), 75-80.

Vancouver

Chizhik A, Melnikova S, Zakharov V. Social Mapping Based on Sentiment Analysis of Comments in Social Media. International Journal of Open Information Technologies. 2022;10(11):75-80.

Author

Chizhik, Anna ; Melnikova, Svetlana ; Zakharov, Victor . / Social Mapping Based on Sentiment Analysis of Comments in Social Media. в: International Journal of Open Information Technologies. 2022 ; Том 10, № 11. стр. 75-80.

BibTeX

@article{80f875d3582c4996b2d7aee6355d4c38,
title = "Social Mapping Based on Sentiment Analysis of Comments in Social Media",
abstract = "The paper is devoted to the testing results of the sentiment analysis algorithms. They were applied to downloaded from the social network VKontakte comments. Comments were written on posts in public communities related to the discussion of the news agenda of the city with separation into districts. The authors collected the dataset with text data from 36 public groups. The ultimate goal of the authors is an interactive map that reflects the index of social well-being of citizens. In this regard, at the first stage, the study was focused on thematic publics present in the selected social network with reference to geolocation. The authors propose the data collection technique based on the analysis of the tempo-rhythm of non-verbal communication of community members. Based on the collected data, the testing study of several machine learning algorithms was carried out in order to identify the most optimal one. The analysis of deep learning methods remained outside the scope of this experiment, but such models seem redundant for solving current problems. The authors also describe reflections on the topic of text vectorization methods, since the correct vectorization model can improve performance and sentiment analysis. In general, the paper presents statistics on the success of the algorithms (logistic regression, random forest, support vector machine), and also describes methods for assessing quality. The implementation of the resulting web service in beta mode is available on GitHub.",
author = "Anna Chizhik and Svetlana Melnikova and Victor Zakharov",
year = "2022",
language = "русский",
volume = "10",
pages = "75--80",
journal = "International Journal of Open Information Technologies",
issn = "2307-8162",
publisher = "Издательство Московского университета",
number = "11",

}

RIS

TY - JOUR

T1 - Social Mapping Based on Sentiment Analysis of Comments in Social Media

AU - Chizhik, Anna

AU - Melnikova, Svetlana

AU - Zakharov, Victor

PY - 2022

Y1 - 2022

N2 - The paper is devoted to the testing results of the sentiment analysis algorithms. They were applied to downloaded from the social network VKontakte comments. Comments were written on posts in public communities related to the discussion of the news agenda of the city with separation into districts. The authors collected the dataset with text data from 36 public groups. The ultimate goal of the authors is an interactive map that reflects the index of social well-being of citizens. In this regard, at the first stage, the study was focused on thematic publics present in the selected social network with reference to geolocation. The authors propose the data collection technique based on the analysis of the tempo-rhythm of non-verbal communication of community members. Based on the collected data, the testing study of several machine learning algorithms was carried out in order to identify the most optimal one. The analysis of deep learning methods remained outside the scope of this experiment, but such models seem redundant for solving current problems. The authors also describe reflections on the topic of text vectorization methods, since the correct vectorization model can improve performance and sentiment analysis. In general, the paper presents statistics on the success of the algorithms (logistic regression, random forest, support vector machine), and also describes methods for assessing quality. The implementation of the resulting web service in beta mode is available on GitHub.

AB - The paper is devoted to the testing results of the sentiment analysis algorithms. They were applied to downloaded from the social network VKontakte comments. Comments were written on posts in public communities related to the discussion of the news agenda of the city with separation into districts. The authors collected the dataset with text data from 36 public groups. The ultimate goal of the authors is an interactive map that reflects the index of social well-being of citizens. In this regard, at the first stage, the study was focused on thematic publics present in the selected social network with reference to geolocation. The authors propose the data collection technique based on the analysis of the tempo-rhythm of non-verbal communication of community members. Based on the collected data, the testing study of several machine learning algorithms was carried out in order to identify the most optimal one. The analysis of deep learning methods remained outside the scope of this experiment, but such models seem redundant for solving current problems. The authors also describe reflections on the topic of text vectorization methods, since the correct vectorization model can improve performance and sentiment analysis. In general, the paper presents statistics on the success of the algorithms (logistic regression, random forest, support vector machine), and also describes methods for assessing quality. The implementation of the resulting web service in beta mode is available on GitHub.

UR - http://injoit.org/index.php/j1/article/view/1434

M3 - статья

VL - 10

SP - 75

EP - 80

JO - International Journal of Open Information Technologies

JF - International Journal of Open Information Technologies

SN - 2307-8162

IS - 11

ER -

ID: 103630992