Röchert, Daniel; Neubaum, German; Stieglitz, Stefan:
Identifying Political Sentiments on YouTube : A Systematic Comparison Regarding the Accuracy of Recurrent Neural Network and Machine Learning Models
In: Disinformation in Open Online Media : Second Multidisciplinary International Symposium; Proccedings / van Duijn, Max; Preuss, Mike; Spaiser, Viktoria; Takes, Frank; Verberne, Suzan (Hrsg.). - MISDOOM 2020; Leiden, The Netherlands; October 26–27, 2020 - Cham: Springer, 2020 - (Lecture Notes in Computer Science ; 12259), S. 107 - 121
2020Buchaufsatz/Kapitel in TagungsbandOA Hybrid
Angewandte KognitionswissenschaftFakultät für Ingenieurwissenschaften » Informatik und Angewandte Kognitionswissenschaft » Angewandte Kognitions- und Medienwissenschaft » Psychologische Prozesse der Bildung in sozialen MedienFakultät für Ingenieurwissenschaften » Informatik und Angewandte Kognitionswissenschaft » Angewandte Kognitions- und Medienwissenschaft » Digitale Kommunikation und Transformation
Damit verbunden: 1 Publikation(en)
Titel in Englisch:
Identifying Political Sentiments on YouTube : A Systematic Comparison Regarding the Accuracy of Recurrent Neural Network and Machine Learning Models
Autor*in:
Röchert, DanielUDE
GND
1262000181
LSF ID
59651
ORCID
0000-0003-2741-3270ORCID iD
Sonstiges
der Hochschule zugeordnete*r Autor*in
;
Neubaum, GermanUDE
GND
1122441630
LSF ID
54726
ORCID
0000-0002-7006-7089ORCID iD
Sonstiges
der Hochschule zugeordnete*r Autor*in
;
Stieglitz, StefanUDE
GND
1020953853
LSF ID
56892
ORCID
0000-0002-4366-1840ORCID iD
Sonstiges
der Hochschule zugeordnete*r Autor*in
Open Access?:
OA Hybrid
Scopus ID
Sprache des Textes:
Englisch
Schlagwort, Thema:
Computational science ; Deep learning ; Machine learning ; Text classification ; Word embeddings

Abstract in Englisch:

Since social media have increasingly become forums to exchange personal opinions, more and more approaches have been suggested to analyze those sentiments automatically. Neural networks and traditional machine learning methods allow individual adaption by training the data, tailoring the algorithm to the particular topic that is discussed. Still, a great number of methodological combinations involving algorithms (e.g., recurrent neural networks (RNN)), techniques (e.g., word2vec), and methods (e.g., Skip-Gram) are possible. This work offers a systematic comparison of sentiment analytical approaches using different word embeddings with RNN architectures and traditional machine learning techniques. Using German comments of controversial political discussions on YouTube, this study uses metrics such as F1-score, precision and recall to compare the quality of performance of different approaches. First results show that deep neural networks outperform multiclass prediction with small datasets in contrast to traditional machine learning models with word embeddings.