An Effective BERT-Based Pipeline for Twitter Sentiment Analysis: A Case Study in Italian
Abstract
:1. Introduction
- A pre-processing phase is carried out to transform Twitter jargon, including emojis and emoticons, into plain text, using language-independent conversion techniques that are general and applicable also to different languages.
- A language model is used, namely BERT, but in its version pre-trained on plain text instead of tweets. There are two reasons for this choice: firstly, the pre-trained models are widely available in many languages, avoiding the time-consuming and resource-intensive model training directly on tweets from scratch, allowing to focus only on their fine-tuning; secondly, available plain text corpora are larger than tweet-only ones, allowing for better performance.
2. Background and Related Works
2.1. Techniques for Sentiment Analysis
2.1.1. Word Embedding
2.1.2. Deep Neural Networks
2.2. Pre-Processing Techniques for Sentiment Analysis
2.3. Sentiment Analysis in the Italian Language
3. Methods
3.1. Pre-Processing Procedures
^([0-2][0-9]|(3)[0-1])(\/)(((0)[0-9])|((1)[0-2]))(\/)\d{4}$→<date>
(\w+@\w+.[\w+]{2,4}$)→<email>
(^\d∗(\.\d{1,2})?$)→<money>
^[0-9]∗$→<number>
\d+(\%|\s\bpercent\b)→<percentage>
([(][\d]{3}[)][ ]?[\d]{3}-[\d]{4})→<phone>
^([0-1][0-9]|[2][0-3]):([0-5][0-9])$→<time>
(\w+:\/\/\S+) → url
(@[A-Za-z0-9]+) → @user
(#S+) → < tokenize(S+) >
#serviziopubblico: La ’buona scuola’ dev’essere: fondata sul lavoro…allora i politici tutti ripetenti? Si, Mastella prima di tutti http://a.co/344555
(#publicservice: The ’good school’ must be: based on work…then politicians all repeating? Yes, Mastella above all http://a.co/344555)
<servizio pubblico>: La ’buona scuola’ dev’essere: fondata sul lavoro…allora i politici tutti ripetenti? Si, Mastella prima di tutti Faccina Con Un Gran Sorriso url
(<public service>: The ’good school’ must be: based on work…then politicians all repeating? Yes, Mastella above all Grinning Face url).
3.2. Bert System Architecture
Transformer
3.3. Model Training
4. Experimental Design
4.1. Data Set
- Task 1: Subjectivity Classification. It was intended to verify the subjectivity and objectivity of tweets.
- Task 2: Polarity Classification. Its purpose was to verify positivity, negativity and neutrality (and their mixes) in tweets. This paper focuses on this task.
- Task 3: Irony Detection. It aimed to verify whether tweets are ironic or not.
4.2. Metrics
4.3. Experiments Execution
5. Results and Discussion
Alla ’Buona scuola’ noi rispondiamo con la ’Vera scuola’! #noallabuonascuola #laverascuola
(To the ’Good school’ we respond with the ’True school’! #noallabuonascuola #laverascuola)
Alla ’Buona scuola’ noi rispondiamo con la ’Vera scuola’! <no alla buona scuola> <la vera scuola>
(To the ’Good school’ we respond with the ’True school’! <no to good school> <the real school>)
#AndreaColletti #M5S: #Riforma della #prescrizione https://t.co/iRMQ3x5rwf #Incalza #TuttiInGalera #ersistema #terradeifuochi
(#AndreaColletti #M5S: #Reformation of the #prescription https://t.co/iRMQ3x5rwf #Pressing #AllInJail #thesystem #fireland)
<Andrea Colletti> <M5S>: <Riforma> della <prescrizione> url <Incalza> <Tutti In Galera> <er sistema> <terra dei fuochi>
(<Andrea Colletti> <M5S>: <Reformation> of the <prescription> url <Pressing> <All In Jail> <the system> <fire land>)
#Roma #PiazzaDiSpagna pochi minuti fa . #NoComment #RomaFeyenoord http://t.co/2F1YtLNc8z
(#Roma #PiazzaDiSpagna few minutes ago . #NoComment #RomaFeyenoord http://t.co/2F1YtLNc8z)
<Roma> <Piazza Di Spagna> pochi minuti fa Faccina Arrabbiata. <No Comment> <Roma Feyenoord> url
(<Rome> <Piazza Di Spagna> a few minutes ago Angry Face. <No Comment> <Roma Feyenoord> url)
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Symbol | English | Italian |
---|---|---|
:) :-) 8-) :-] :-)) | Happy | Felice |
:-( :( :-\ | Sad | Triste |
:-P x-p | Joking | Scherzo |
<3 < 3 :∗ | Love | Amore |
Emoji | Meaning | Italian |
---|---|---|
Crying Face | Faccina Che Piange | |
Grinning Face | Faccina Con Un Gran Sorriso | |
Heart With Arrow | Cuore Con Freccia | |
Pouting Face | Faccina Arrabbiata |
Hyperparameter | Value |
---|---|
Attention heads | 12 |
Batch size | 8 |
Epochs | 5 |
Gradient accumulation steps | 16 |
Hidden size | 768 |
Hidden layers | 12 |
Learning rate | 0.00003 |
Maximum sequence length | 128 |
Parameters | 110 M |
Characteristic | Train | Test |
---|---|---|
Emoji | 157 | 145 |
Emoticon | 320 | 20 |
Hashtag | 5417 | 2180 |
Mention | 3138 | 1564 |
Other | 1468 | 464 |
URL | 2314 | 956 |
Combination | Resulting Sentiment | Train | Test | |
---|---|---|---|---|
oneg | opos | |||
0 | 0 | Neutral | 2816 | 914 |
0 | 1 | Positive | 1611 | 316 |
1 | 0 | Negative | 2543 | 734 |
1 | 1 | Mixed | 440 | 36 |
System | F | ||
---|---|---|---|
Proposed System | 0.7381 | 0.7620 | 0.7500 |
AlBERTo | 0.7155 | 0.7291 | 0.7223 |
LSTM-based [81] | 0.6600 | 0.7360 | 0.6980 |
CNN-based [77] | 0.6529 | 0.7128 | 0.6828 |
UniPI.2.c | 0.6850 | 0.6426 | 0.6638 |
Unitor.1.u | 0.6354 | 0.6885 | 0.6620 |
Unitor.2.u | 0.6312 | 0.6838 | 0.6575 |
ItaliaNLP.1.c | 0.6265 | 0.6743 | 0.6504 |
Multilingual BERT [82] | - | - | 0.5217 |
Model | |||||||
---|---|---|---|---|---|---|---|
BERT | 0.9172 | 0.8871 | 0.9019 | 0.5419 | 0.6250 | 0.5805 | 0.7412 |
Pre-processing + BERT | 0.9262 | 0.8618 | 0.8928 | 0.5125 | 0.6780 | 0.5833 | 0.7381 |
Model | |||||||
BERT | 0.7639 | 0.9285 | 0.8382 | 0.8257 | 0.5416 | 0.6541 | 0.7461 |
Pre-processing + BERT | 0.7759 | 0.9295 | 0.8458 | 0.8358 | 0.5710 | 0.6782 | 0.7620 |
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Pota, M.; Ventura, M.; Catelli, R.; Esposito, M. An Effective BERT-Based Pipeline for Twitter Sentiment Analysis: A Case Study in Italian. Sensors 2021, 21, 133. https://doi.org/10.3390/s21010133
Pota M, Ventura M, Catelli R, Esposito M. An Effective BERT-Based Pipeline for Twitter Sentiment Analysis: A Case Study in Italian. Sensors. 2021; 21(1):133. https://doi.org/10.3390/s21010133
Chicago/Turabian StylePota, Marco, Mirko Ventura, Rosario Catelli, and Massimo Esposito. 2021. "An Effective BERT-Based Pipeline for Twitter Sentiment Analysis: A Case Study in Italian" Sensors 21, no. 1: 133. https://doi.org/10.3390/s21010133