COVID-19 has created an interesting discourse among the people of the world particularly regarding preventive measures of infectious diseases. In this paper, the authors forecast the spread of the Coronavirus outbreak and study how the reduction of transmission rates influences its decline. The paper makes use of the SIR (Susceptible Infected Recovered)Model which is a deterministic model used in the field of epidemiology-based on differential equations derived from sections of the population. The Basic Reproduction Number (R o ) represents the criticality of the epidemic in numeric terms. Forecasting an epidemic provides insights about the geographic spreading of the disease and the case incidences required to better inform intervention strategists about situations that may occur during the outbreak.Through this research paper, the authors wish to provide an insight into the impact of control measures on the pandemic. By drawing a comparison of three countries and their quarantine measures, observations on the decline of the outbreak are made. Authors intend to guide the intervention strategies of under-resourced countries like India and aid in the overall containment of the outbreak.
Mental health plays an integral part in leading a
healthy life and having a positive outlook. This impacts our
behavior, thought process, and actions and therefore it’simportant
to identify and detect mental disorders in an early stage as it’s
effects can have a lasting influence on one’s life. According to
WHO, one in four people get affected by mental health disorders
and currently 450 million people suffer from such conditions.
Natural Language Processing can be a useful tool to analyze the
trends in therapy transcripts. They can be further trained and
optimized to derive useful insights and predict plausible future
trends. Our proposed system analyses therapy transcripts and
classifies it as ’Early signs of depression’ and ’Serious after-effects
of prolonged depression’ based on the nature of the responses.
Our system uses three different classifiers- Naïve Bayes, Support
Vector Machine, and Logistic regression as well as two different
victories- TF-IDF and Count, to classify the text into these
categories. This proposed system will not only help patients in
identifying their symptoms but will also help therapists and
researchers in gathering a large amount of data which could
be used in predictive analysis, diagnosis and understanding the
patient. Such research will pave the way for improving counselling
and therapy sessions and be a very essential analysis tool for
therapists
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