| Literature DB >> 35577861 |
Rosario Gilmary1, Akila Venkatesan2, Govindasamy Vaiyapuri3, Deepikashini Balamurali2.
Abstract
Twitter is a renowned microblogging site that allows users to interact using tweets and it has almost reached 206 million daily active users by the second quarter of 2021. The ratio of Twitter bots has risen in tandem with their popularity. Bot detection is critical for combating misinformation and protecting the credibility of online disclosures. Current bot detection approaches rely on the Twitosphere's topological structure, ignoring the heterogeneity among the profiles. Moreover, most techniques incorporate supervised learning, which depends strongly on large-scale training sets. Therefore, to overcome these issues, we proposed a novel entropy-based framework to detect correlated bots leveraging only user behavior. Specifically, real-time data of users is collected and their online behaviors are modeled as DNA sequences. We then determine the probability distribution of DNA sequences and compute relative entropy to evaluate the distance between the distributions. Accounts with entropy values less than a fixed threshold represent bots. Extensive experiments conducted in real-time Twitter data prove that the proposed detection technique outperforms state-of-the-art approaches with precision = 0.9471, recall = 0.9682, F1 score = 0.9511, and accuracy = 0.9457.Entities:
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Year: 2022 PMID: 35577861 PMCID: PMC9108350 DOI: 10.1038/s41598-022-11854-w
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Experimental design of proposed work.
Labelling and descriptions of DNA base in user profile.
| Base | Description |
|---|---|
| A ← plain tweet | |
| T ← plain mention | |
| G ← plain retweet | |
| C ← tweet with media / URLs |
Figure 2Flow diagram of data collection.
Analysis conducted to set decision threshold in Group_1 and Group_2.
| Datasets | No. of accounts | |||
|---|---|---|---|---|
| Group_1 | 50 | 0.0093 | 0.3501 | 0.4011 |
| 100 | 0.0282 | 0.4209 | 0.4591 | |
| 150 | 0.0829 | 0.4526 | 0.4973 | |
| 200 | 0.1054 | 0.4803 | 0.5291 | |
| Group_2 | 50 | 0.0157 | 0.3690 | 0.4179 |
| 100 | 0.0328 | 0.4259 | 0.4358 | |
| 150 | 0.0978 | 0.4531 | 0.4939 | |
| 200 | 0.1191 | 0.4950 | 0.4969 | |
| Mean | 0.0614 | 0.4308 | 0.4663 | |
| Inference | ||||
| Decision threshold | Sample Maxima | |||
Comparison of performance calculated by different techniques on test datasets.
| Dataset | Size | Technique | Evaluation metrics | |||||
|---|---|---|---|---|---|---|---|---|
| Precision | Recall | Miss Rate | Accuracy | F1 | MCC | |||
| Test_1 | 600 | DNA influenced relative entropy | 0.9416 | 0.9784 | 0.0216 | 0.9457 | 0.9443 | 0.9010 |
| Approximate entropy[ | 0.7686 | 0.9617 | 0.0383 | 0.8483 | 0.8679 | 0.7295 | ||
| Sample entropy[ | 0.7028 | 0.9626 | 0.0374 | 0.7926 | 0.8243 | 0.6332 | ||
| DNA fingerprinting[ | 0.9298 | 0.7350 | 0.2650 | 0.9230 | 0.9229 | 0.8470 | ||
| Botometer[ | 0.6291 | 0.2911 | 0.7089 | 0.4898 | 0.3690 | 0.2038 | ||
| Test_2 | 600 | DNA influenced relative entropy | 0.9403 | 0.9733 | 0.0267 | 0.9379 | 0.9453 | 0.9042 |
| Approximate entropy[ | 0.7704 | 0.9621 | 0.0379 | 0.8500 | 0.8692 | 0.7324 | ||
| Sample entropy[ | 0.7044 | 0.9633 | 0.0367 | 0.7963 | 0.8256 | 0.6363 | ||
| DNA fingerprinting[ | 0.9301 | 0.8018 | 0.1982 | 0.9201 | 0.9198 | 0.8590 | ||
| Botometer[ | 0.6701 | 0.2967 | 0.7033 | 0.4902 | 0.3897 | 0.2103 | ||
| Test_3 | 600 | DNA influenced relative entropy | 0.9431 | 0.9671 | 0.0329 | 0.9412 | 0.9531 | 0.9137 |
| Approximate entropy[ | 0.7773 | 0.9614 | 0.0386 | 0.8558 | 0.8737 | 0.7422 | ||
| Sample entropy[ | 0.7125 | 0.9625 | 0.0375 | 0.7997 | 0.8313 | 0.6492 | ||
| DNA fingerprinting[ | 0.9249 | 0.7834 | 0.2166 | 0.9215 | 0.9214 | 0.8530 | ||
| Botometer[ | 0.6770 | 0.3048 | 0.6952 | 0.5001 | 0.4089 | 0.2175 | ||
| Test_4 | 600 | DNA influenced relative entropy | 0.9526 | 0.9629 | 0.0371 | 0.9509 | 0.9550 | 0.9200 |
| Approximate entropy[ | 0.7859 | 0.9610 | 0.0390 | 0.8599 | 0.8792 | 0.7473 | ||
| Sample entropy[ | 0.7249 | 0.9623 | 0.0377 | 0.8089 | 0.8397 | 0.6585 | ||
| DNA fingerprinting[ | 0.9290 | 0.7991 | 0.2009 | 0.9198 | 0.9191 | 0.8390 | ||
| Botometer[ | 0.6842 | 0.3057 | 0.6943 | 0.5760 | 0.4190 | 0.2298 | ||
| Test_5 | 600 | DNA influenced relative entropy | 0.9581 | 0.9591 | 0.0409 | 0.9528 | 0.9579 | 0.9273 |
| Approximate entropy[ | 0.8013 | 0.9501 | 0.0499 | 0.8665 | 0.8896 | 0.7548 | ||
| Sample entropy[ | 0.7459 | 0.9513 | 0.0487 | 0.8190 | 0.8537 | 0.6682 | ||
| DNA fingerprinting[ | 0.9339 | 0.8023 | 0.1977 | 0.9211 | 0.9208 | 0.8495 | ||
| Botometer[ | 0.6949 | 0.3091 | 0.6909 | 0.5832 | 0.4281 | 0.2349 | ||
Figure 3Comparison of Precision metric for different state-of-art approaches.
Figure 4Comparison of Recall metric for different state-of-art approaches.
Figure 5Comparison of Miss rate metric for different state-of-art approaches.
Figure 6Comparison of Accuracy metric for different state-of-art approaches.
Figure 7Comparison of F1 score metric for different state-of-art approaches.
Figure 8Comparison of MCC metric for different state-of-art approaches.