Conversational AI for companionship
Abstract
The conversational style of a human is estimated by humor, personality, voice tone,
etc. These characteristics are necessary for virtual assistants that are artificially
intelligent for conversation. This research recommends an intelligent system capable
of holding an appropriate human-like dialogue, including the emotion and
personality of a specific character. To draw the pattern of the attributes of specified
emotion, a method can be used to transmit voice tone. In order to determine all the
necessary characteristics mentioned above, the goal is to use different categories of
machine learning models. Since the pattern of conversation, style varies from one
individual to another and geographically, our goal is to create a virtual assistant.
In addition, a conversational model will be applied to it. It will read the category
of emotions(exclamation, assertion, negation, interrogation) of human beings and
respond accordingly. Many methodologies are being utilized to predict sentiments
through AI and react accordingly. IVA is one of them but with its limitations and
boundaries. Therefore, this paper comes with several methodologies that can be
used alongside IVA; such as HMM, GMM, SVM, NLU, BoAW, BERT, etc. These
algorithms and methodologies will help to predict the sentiments used in a context
and precisely predict the outcome of an inquiry. To sum it up, this thesis aims to
create a conversational AI for companionship, which will create an emotional bridge
between itself and the user.