Sentiment Analysis Model for Online Public Participation Forums
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Date
2021-10Author
Manases, Malachi
Thiga, Moses
Masese, Nelson
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Show full item recordAbstract
Public participation (PP) is a key constitutional principle outlined in the
Constitution of Kenya. It promotes democratic and accountable exercise of power. It
gives the citizens an opportunity to enhance self-development and service delivery
while accounting for their leaders’ actions. However, lack of/insufficient public
participation in Kenyan county governments is impeding effective devolution
process. Among the reasons advanced for this development are inadequate
communications. Still even in cases where PP has been successfully carried out,
capturing, and analysing the sentiments of the participants remain a serious
challenge. Therefore, an online PP tool with embedded sentiment analysis algorithms
specifically designed for the counties can be quite resourceful under the
circumstances. The main objective of the study was to develop a sentiment analysis
model for use in public participation forums in County Governments in Kenya. The
specific objectives are to; evaluate the difficulty in obtaining sentiments; determine
the challenges faced in the design of an effective sentiment analysis model for public
participation forums; design a sentiment model for public participation forums in
county governments and evaluate the performance of sentiment analysis model for
public participation forums in county governments. The study was conducted
through the design thinking process. The population of interest of this study
comprised of county management and staff also area residents in Nakuru, Busia and
Baringo counties who have participated in public participation forums before. A
sample size of 106 respondents comprising 23 county administrators and 83
residents were purposively sampled for the project. The findings indicate that there
exists a statistically significant difference in public participation amongst the three
counties (Baringo, Busia and Nakuru) at the 0.05 alpha level, F (2, 500) = 100.296,
p< 0.05. The results of regression analysis revealed that human-based factors
significantly influence public participation (β=0.520; p<0.05) while technological
factors affect public participation significantly (β=0.449; p<0.05). These findings
were incorporated in the model design.