ABSTRACT
The battle with malaria
especially in the African continent still exists and has been taking the lives
ofmany in the area, so there is a need to keep fighting tire battle, monitor
progress and challenges. One way is the usage ofsocial media particularly twitter
as a tool to fight malaria. Research has been done on malaria twitter data to
classify tweets as malaria and non-malaria cases using support vector machine
(SVM) which is used in the predictions offuture tweets to avoid outbreaks.
Malaria twitter data has also been used to find trends and patterns on public
opinions regarding malaria topics which is used by health sectors in managing
funds allocation and making informed decisions. The objective of this study is
to tap into Nigerian Malaria twitter data to understand public opinions
oftweets relating to malaria, gain insight into the data to find trends and
patterns and compare results widr WHO battle against malaria. We describe a
combine approach of sentiment analysis, word cloud and topic modelling using
LDA. The sentiment analysis is for assessing public opinion about malaria in
Nigeria. Word cloud for data visualization and LDA to find hidden topics which
is compared to WHO fight against malaria. Despite the small size oftire data
set, the word cloud visualized topics with the highest frequency and this could
be labelled as topics creating awareness on malaria, malaria treatment, testing
before treating malaria and tire goal ofhaving a malaria free Nigeria. The LDA
result correlated well with WHO’s battle against malaria and issues the battle
is still facing like adverse effect ofmalaria on pregnant women and ycung
children under age 5. The sentiment analysis provided us sentiment and public
opinion of tweets with 42.6% positive, 15.6% negative and 41.8% neutral.
MICHAEL, U (2026). Malaria Prevention Using Social Media And Text Mining Using Support Vector Machine:- Nwabeke Chibuike V . Repository.mouau.edu.ng: Retrieved Jun 02, 2026, from https://repository.mouau.edu.ng/work/view/malaria-prevention-using-social-media-and-text-mining-using-support-vector-machine-nwabeke-chibuike-v-7-2
UNIVERSITY, MICHAEL. "Malaria Prevention Using Social Media And Text Mining Using Support Vector Machine:- Nwabeke Chibuike V " Repository.mouau.edu.ng. Repository.mouau.edu.ng, 01 Jun. 2026, https://repository.mouau.edu.ng/work/view/malaria-prevention-using-social-media-and-text-mining-using-support-vector-machine-nwabeke-chibuike-v-7-2. Accessed 02 Jun. 2026.
UNIVERSITY, MICHAEL. "Malaria Prevention Using Social Media And Text Mining Using Support Vector Machine:- Nwabeke Chibuike V ". Repository.mouau.edu.ng, Repository.mouau.edu.ng, 01 Jun. 2026. Web. 02 Jun. 2026. < https://repository.mouau.edu.ng/work/view/malaria-prevention-using-social-media-and-text-mining-using-support-vector-machine-nwabeke-chibuike-v-7-2 >.
UNIVERSITY, MICHAEL. "Malaria Prevention Using Social Media And Text Mining Using Support Vector Machine:- Nwabeke Chibuike V " Repository.mouau.edu.ng (2026). Accessed 02 Jun. 2026. https://repository.mouau.edu.ng/work/view/malaria-prevention-using-social-media-and-text-mining-using-support-vector-machine-nwabeke-chibuike-v-7-2