| Literature DB >> 35966193 |
Yashasvi Koul1, Kanishk Mamgain1, Ankit Gupta1.
Abstract
Social media has become such a large part of people's life that even if little at a time, that influence can accommodate over time and can manipulate or even form new opinions. The authors have gathered data with which it is easily understood that the growth of Twitter, the people within its engagement range and its potential for becoming a portal of information sourcing as well as incidents have grown considerably well over the last decade and are well expected to grow into the next decade as well due to the new generation telecom technologies. This study aims to understand how much time Twitter trends remain 'hot' based on various parameters including but not limited to demography, the incident, time period or the people affected.The main objective is to gather data about different trending topics over different time periods and then analyze the pattern of how tweet volume due to that Twitter trend increased or decreased over a few days. This allows to demonstrate that Twitter can be a powerful tool to manipulate public opinion since this reaches a large number of users in a lot of developed countries. The influence of tweets can be seen from the fact that even a tweet done from a non-influential person's account can garner enough attention to become worldwide phenomenon. Towards the end of the study, the authors used a visual medium to depict how various topics fared over the 5 days that tweets were scraped.Entities:
Keywords: Distribution; Graphs; Opinions; Patterns of trends; Trend; Twitter
Year: 2022 PMID: 35966193 PMCID: PMC9362131 DOI: 10.1007/s13278-022-00926-4
Source DB: PubMed Journal: Soc Netw Anal Min
Fig. 1Flow of Work
Fig. 2Working of twint
Fig. 3Classification of tweets
Fig. 4Graphs of various international events (part 1)
Fig. 5Graphs of various international events (part 2)
Fig. 6Graphs of various national events
Fig. 7Graphs of various regional events
International news
| Event no. | Event name | Day1 | Day2 | day3 | Day4 | Day5 |
|---|---|---|---|---|---|---|
| 1 | Japan earthquake (11-03-11) | 50003 | 50002 | 50007 | 50009 | 45173 |
| 2 | 2014 Football worldcup (14-07-14) | 24415 | 11273 | 7693 | 7080 | 4728 |
| 3 | Paris Attacks (13-11-15) | 29406 | 65594 | 53903 | 30980 | 22654 |
| 4 | leicester 2016 (02-05-16) | 20058 | 16572 | 2812 | 1406 | 1127 |
| 5 | PV Sindhu 2016 Silver (19-08-16) | 16717 | 2504 | 2984 | 4603 | 2094 |
| 6 | Surgical Strikes URI (29-08-16) | 54182 | 26200 | 10481 | 8149 | 9660 |
| 7 | 2016 presidential elections (06-01-17) | 47154 | 23590 | 28376 | 50009 | 50014 |
| 8 | #metoo Harvey weinstein (15-10-17) | 37342 | 31340 | 22333 | 15339 | 13028 |
| 9 | 2019 cricket world cup (30-05-19) | 24417 | 11273 | 7695 | 7082 | 4278 |
| 10 | Kobe bryant death (26-01-20) | 15012 | 10014 | 10006 | 10005 | 10016 |
| 11 | George Floyd (25-05-20) | 24585 | 50000 | 50017 | 10758 | 20400 |
| 12 | Biden won elections (03-11-20) | 50010 | 45552 | 35652 | 22343 | 13256 |
| 13 | Capitol Hill Riots (06-01-21) | 3294 | 9161 | 9493 | 8194 | 6224 |
| 14 | Copa America (11-07-21) | 58924 | 62161 | 36462 | 26942 | 14832 |
| 15 | Danish Siddiqui (16-07-21) | 16821 | 7794 | 2666 | 1178 | 415 |
| 16 | Neeraj Chopra Gold (07-08-21) | 50016 | 19029 | 2243 | 1381 | 815 |
National news
| Event no. | Event name | Day1 | Day2 | Day3 | Day | Day5 |
|---|---|---|---|---|---|---|
| 17 | 2014 Lok Sabha Elections (16-05-14) | 29300 | 4129 | 5593 | 2333 | 2284 |
| 18 | Telangana formed (02-06-14) | 18533 | 4127 | 5591 | 2331 | 2282 |
| 19 | Mangal Yaan (24-09-14) | 50011 | 6737 | 1698 | 833 | 896 |
| 20 | Make in India (25-09-14) | 30545 | 7574 | 2451 | 900 | 750 |
| 21 | AB Vajpayee death (16-08-18) | 64449 | 50016 | 6976 | 4527 | 2631 |
| 22 | 2019 Lok Sabha elections (23-05-19) | 50024 | 35340 | 37520 | 21000 | 18000 |
| 23 | Chandrayan 2 (06-09-19) | 30153 | 15245 | 6153 | 3816 | 2500 |
| 24 | Ram Mandir (9-11-19) | 44561 | 42045 | 35652 | 27545 | 10489 |
| 25 | SSR suicide (14-06-20) | 50007 | 33163 | 30146 | 30917 | 22739 |
Regional news
| Event no. | Event name | Day1 | Day2 | Day3 | Day | Day5 |
|---|---|---|---|---|---|---|
| 26 | JNU Protests (9-02-16) | 14540 | 12587 | 26640 | 35300 | 23264 |
| 27 | Padmavat riots (25-01-18) | 30303 | 1246 | 2847 | 9869 | 8708 |
| 28 | Kaveri water dispute verdict (16-02-18) | 15760 | 10240 | 5777 | 2450 | 989 |
| 29 | Delhi riots (23-02-21) | 19250 | 49999 | 50007 | 50005 | 50013 |
| 30 | Lakhimpur incident (03-10-21) | 30017 | 15475 | 10475 | 4147 | 2456 |
The significance of [bold] in table 4 is that it depicts the maximum percentage increase in cases where we are depicting exception in the drop of tweet volume.
Percentage drop (day-wise)
| Event no. | Day1-2 | Day2-3 | Day3-4 | Day4-5 | |
|---|---|---|---|---|---|
| 1 | 0 | 0 | 0 | 9.60000 | – |
| 2 | 53.82756 | 31.75729 | 7.96828 | 33.22033 | – |
| 3 |
| 17.82327 | 42.52639 | 26.87540 | Exception |
| 4 | 17.37959 | 83.03161 | 50.00000 | 19.84352 | – |
| 5 | 85.02123 | − 19.16932 | − 54.25603 | 54.50792 | – |
| 6 | 51.64445 | 59.99618 | 22.24978 | − 18.54215 | – |
| 7 | 49.97243 | − 20.28825 |
| − 0.00999 | Exception |
| 8 | 16.07305 | 28.73962 | 31.31688 | 15.06617 | – |
| 9 | 53.83134 | 31.73955 | 7.96621 | 39.59333 | – |
| 10 | 33.29336 | 0.07988 | 0.00999 | − 0.10994 | – |
| 11 |
| − 0.03400 | 78.49131 | − 89.62632 | Exception |
| 12 | 8.91421 | 21.73340 | 37.33030 | 40.67045 | – |
| 13 |
| − 3.62405 | 13.68376 | 24.04198 | Exception |
| 14 | − 5.49351 | 41.34264 | 26.10937 | 44.94840 | – |
| 15 | 53.66506 | 65.79420 | 55.81395 | 64.77079 | – |
| 16 | 61.95417 | 88.21272 | 38.43067 | 40.98479 | – |
| 17 | 85.90000 | − 35.40000 | 58.20000 | 2.10000 | – |
| 18 | 77.73161 | − 35.47370 | 58.30799 | 2.10210 | – |
| 19 | 86.52896 | 74.79590 | 50.94228 | − 7.56302 | – |
| 20 | 75.20379 | 67.63929 | 63.28029 | 16.66666 | – |
| 21 | 22.39445 | 86.05246 | 35.10607 | 41.88204 | – |
| 22 | 29.35391 | − 6.16864 | 44.02985 | 14.28571 | – |
| 23 | 49.44118 | 59.63922 | 37.98147 | 34.48637 | – |
| 24 | 5.64619 | 1.41515 | 0.02412 | 3.36631 | – |
| 25 | 33.68328 | 9.09748 | − 2.55755 | 26.45146 | – |
| 26 | 13.43191 |
| − 32.50750 | 34.09631 | Exception |
| 27 | 95.88819 | − 128.49117 |
| 11.76410 | Exception |
| 28 | 35.02538 | 43.58398 | 57.59044 | 59.63265 | – |
| 29 |
| − 0.01600 | 0.00399 | − 0.01599 | Exception |
| 30 | 48.44588 | 32.31017 | 60.41050 | 40.77646 | – |
Fig. 8Data with Exceptions
Fig. 9Data without exception
Fig. 10Purely decreasing Data