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Covid-19-Sentimental-Ananlysis-Python-Datascience

Abstract

This project explores and discusses how people globally reacted to the corona virus pandemic. We used social media, specifically twitter, to do so as social media is a means of expression around the world. Hence, we can gauge the sentiment levels per day by using data from it. We use the tweepy library in order to extract data from tweet ids and find the mean sentiment per day by taking the mean sentiment of all tweets for a particular day. This mean sentiment is plotted graphically against the date along with covid data such as the number of covid deaths and the number of covid cases to find any relationship between the tweet sentiment data and the covid data. From this data analysis, we test the hypothesis that the mean sentiment of people was always greater than the number of new covid cases. The number of covid cases can be taken as a measure of negativity as covid is the reason for the downfall in mental health of people around the world. We therefore prove that the mean sentiment of tweets per day was positive and the mean sentiment score per day increased as the negative sentiment increased (number of covid cases). We can therefore infer that the social media tried to spread positivity during this tough time.

Introduction

With the current covid-19 pandemic that has taken over the planet, we wanted to see how people around the world were affected mentally during the peak of lockdown. We decided to take to social media as the means to do so, specifically twitter. Our project is about checking how the number covid cases and deaths have affected the mean sentiment of tweets from 20-03-2020 to 9-10-2020 and therefore check if there is any relationship between the covid numbers and the mean sentiment of tweets. 

Dataset

Our data sources are: tweets data and covid statistics data set. tweets data:  https://ieee-dataport.org/open-access/coronavirus-covid-19-tweets-dataset#files These consisted of the tweet id and sentiment of each tweet posted each day having active hashtags and keywords related to covid-19. From the 206 files we had (each corresponding to a day in 20-03-2020 to 9-10-2020) Columns included: tweet id, tweet sentiment score

Active keywords and hashtags :

"corona", "#corona", "coronavirus", "#coronavirus", "covid", "#covid", "covid19", "#covid19", "covid-19", "#covid-19", "sarscov2", "#sarscov2", "sars cov2", "sars cov 2", "covid_19", "#covid_19", "#ncov", "ncov", "#ncov2019", "ncov2019", "2019-ncov", "#2019-ncov", "pandemic", "#pandemic" "#2019ncov", "2019ncov", "quarantine", "#quarantine", "flatten the curve", "flattening the curve", "#flatteningthecurve", "#flattenthecurve", "hand sanitizer", "#handsanitizer", "#lockdown", "lockdown", "social distancing", "#socialdistancing", "work from home", "#workfromhome", "working from home", "#workingfromhome", "ppe", "n95", "#ppe", "#n95", "#covidiots", "covidiots", "herd immunity", "#herdimmunity", "pneumonia", "#pneumonia", "chinese virus", "#chinesevirus", "wuhan virus", "#wuhanvirus", "kung flu", "#kungflu", "wearamask", "#wearamask", "wear a mask", "vaccine", "vaccines", "#vaccine", "#vaccines", "corona vaccine", "corona vaccines", "#coronavaccine", "#coronavaccines", "face shield", "#faceshield", "face shields", "#faceshields", "health worker", "#healthworker", "health workers", "#healthworkers", "#stayhomestaysafe", "#coronaupdate", "#frontlineheroes", "#coronawarriors", "#homeschool", "#homeschooling", "#hometasking", "#masks4all", "#wfh", "wash ur hands", "wash your hands", "#washurhands", "#washyourhands", "#stayathome", "#stayhome", "#selfisolating", "self isolating"

Covid statistics data

We considered the WHO dataset for covid-19 which contained the number of cases, cumulative number of cases, number of deaths and cumulative number of deaths for each day in our chosen time period.

Columns included

Date_reported, Country_code, Country, WHO_region, New_cases, New_deaths, Cumulative_cases, New_deaths, Cumulative_deaths

Pre-processing and Data cleaning
Twitter data: 

Each sample file contained sentiment score of a tweet and its tweet-id. 1000 samples from each file were taken where any non-existing tweet-id row was ignored(removed). Using the tweepy library, we extracted the date of posting, number of retweets and number of likes of a tweet were extracted using tweet-id. This data was used to calculate: mean sentiment, mean retweeted sentiment, mean liked sentiment, most agreed with sentiment, where:

Mean sentiment = Mean retweeted sentiment = mean of sentiments of top 20% highest retweets tweets

Mean liked sentiment = mean of sentiments of top 20% highest likes tweets

Most agreed with sentiment = mean (Men retweeted sentiment, mean liked sentiment)

Mean retweeted sentiment, mean liked sentiment and most agreed with sentiment werecalculated to check if the mean of posted sentiment varied drastically with the sentiment score of the most popular tweets (showing what sentiment people agreed with the most)

Covid-19 statistics data

We considered the WHO data-set containing the number of cases, cumulative number of cases, number of deaths and cumulative number of deaths for each day in our chosen time period.

Colums dropped

Country_code, Country, WHO_region, The rows were grouped together based on date and sum of each column of New_cases,New_deaths, Cumulative_cases, New_deaths, Cumulative_deaths for each day.

Final Cleaned data set

Both cleaned data sets were merged based on date. Any NaN value in a column was imputed by mean value of that column. Date values also had to be unified to the ‘dd-mm-yyyy’ format.

Missing Data percentage: 9.2233%

Columns of the final data set-

Date

Mean Sentiment – mean sentiment of that day

Mean retweeted sentiment – mean sentiment of top 20% retweeted tweets

Mean liked sentiment - mean sentiment of top 20% liked tweets

Most agreed with sentiment – mean of mean retweeted and mean liked sentiment

Number of tweets – number of tweets having active keywords posted that day

New cases- new covid-19 cases confirmed cases of that day

Cumulative cases - total number of covid-19 cases confirmed so far

New deaths - new covid-19 cases confirmed deaths of that day

Cumulative deaths - total number of covid-19 death confirmed so far

All the above columns were normalised before further testing, to fit in the range of 0 to 1. If the mean sentiment (of the day) <0.5 , this implies that the sentiment that day was negative.

If the mean sentiment (of the day) >0.5 , this implies that the sentiment that day was positive.

If the mean sentiment (of the day) =0.5 , this implies that the sentiment that day was neutral.

Since the data is normalised, it would make sense when we compared it with other columns as they all fall within the same range.

Exploratory Data analysis

On plotting the line graphs of normalized covid related variables and tweet related variables, the graphs of mean sentiment and new deaths seemed to have a correlation and peaks and drops seemed to be present on the same date. Here the date on the x-axis is represented as numbers where 0 is 20-03-202 and 206 is 9-10-2020. (this was done for more readability).

This same trend/relationship was seen with mean retweeted sentiment and mean liked sentiment with the number of new deaths per day. The graphs also proved that the sentiment of the most popular tweets (wrt retweets and likes) did not vary from the mean sentiment of the day as much as we thought it would.

We also found that as number of covid cases increased, the number of tweets related to covid also increased. This was expected as the morenumber of covid-19 cases, the greater it is discussed as the more awareness and information is spread about it. We also wanted to see the same trends in the peak of the spread of the virus (and the peak of lockdowns globally), so line graphs were plotted for the months of June, July and August (these months were selected as all countries had large number of covid cases at this time and were in their peak number of cases. No country had successfully fought off the virus yet). The trends of the means sentiment of tweets and the number of covid deaths were found to be very similar.

Hypothesis Testing

All the above analysis lead us to the hypothesis that: However much the number of new covid deaths increased, the mean sentiment of tweets always was more, i.e. however negative the global atmosphere became people spread positivety (to a greater extent) instead of spreading their current negative emotions. Here we are considering that the number of deaths due to covid leads to a negative atmosphere/sentiment as it gives reason for it. Therefore, we tested

2 hypotheses:

People’s positivity is always greater than the number of covid cases (sentiment was more positive with the increase in negativity)

People’s sentiment was not equal to the number of covid cases, i.e., they were not positive in the same magnitude as the negativity.

####### NULL HYPOTHESIS (H O ) – The difference between means of the mean sentiment and mean number of cases is lesser than or equal to 0

####### ALTERNATIVE HYPOTHESIS (H 1 ) – The difference between means of the mean sentiment and mean number of cases is always positive

####### SIGNIFICANCE LEVEL (ALPHA) – The significance level is 0.05 H0 : μx - μy <= 0 H1 : μx - μy > 0 alpha value is : 0.05 actual_z: 1.6448536269514729 hypo_z: 4.816478261987024

Reject NULL Hypothesis
Results and discussions

From the above hypothesis tests, we can determine that: taking number of covid cases as a measure (and reason) of global negativity, the mean sentiments of tweets were always positive to a greater extent than the global negativity (number of covid cases). This can help us say that social media tries to create a positive impact on world even during the toughest of times. We can also infer that during the months of June, July and August, a correlation between the mean sentiment of tweets and the number covid deaths exists. This can be seen by the heatmap of those months.

As social media is seen as an outlet for emotions (especially twitter), we had expected to see a decline in sentiment score with increase in covid cases and deaths, we found out the opposite. This also maybe due to the fact that most corona related tags are positive related tags such as: #stayhomestaysafe and this may have led to the increase in positive sentiments as people tried spreading more positivity as number of cases increased at an alarming rate.