Can the machine transform an existing program to a newly generated program that can runs programs with higher efficiency and produce correct results?Įven though the deep learning model is relatively mature, imitation of human natural language behavior through deep learning is still a difficult task.
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It is worth exploring as to how to solve the above problems, and thus we have formulated the following idea.
However, some voice assistant machines have encountered certain problems, that is, the machine may not be able to answer the questions correctly, or the existing programs have low execution efficiency. Nowadays, there are quite a lot of brands and types of voice assistant machines in the world, and their existing programs are used for human-computer interaction in response to user requests. These tools not only function as the basis of human language imitation but also play a key role for API offerings in AI applications. The use of artificial intelligence for human-computer interaction in voice assistant machines-related tools have flourished, such as Tesla’s NoA, Apple’s Siri, Amazon Echo and Alexa, and Google Home. Accordingly, research about human-computer interaction is meant to imitate human behavior, especially natural language representation and interpretation in the voice assistant machine. Since then, research in artificial intelligence has been increasing again. IntroductionĪlpha Go was developed by Google DeepMind in London in 2014, and it defeated all other Go masters.
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As a result, the newly generated programs outperform the sample programs because the proposed approach reduces the number of code lines by 32.71% and lowers the program execution time by 24.34%, which is of great significance. According to code checking and program output verification, the processes can expedite transform operations efficiently by removing the redundant generated programs and finding the best-performing generated program. In addition, the proposed approach not only imitates a voice assistant system with filtering redundant keywords or adding new keywords to complete keyword retrieval in semantic database but also checks code similarity and verifies the conformity of the executive outputs between sample programs and newly generated programs. In essence, this paper introduces a theoretical estimation in statistics to infer at least a number of generated programs as required so as to guarantee that the best one can be found within them. Therefore, this study proposes a novel transform method to replace the existing programs (called sample programs in this paper) inside the machine with newly generated programs through code transform model GPT-2 that can reasonably solve the problem mentioned above.
However, the crucial problem is that the machine often may not give a proper answer to the user or cannot work out the existing program execution efficiently. The existing programs inside the voice assistant machine prompt human-machine interaction in response to a request from a user.