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http://dx.doi.org/10.22156/CS4SMB.2021.11.08.036

Explanable Artificial Intelligence Study based on Blockchain Using Point Cloud  

Hong, Sunghyuck (Division of Smart IT, Fintech major, Baekseok University)
Publication Information
Journal of Convergence for Information Technology / v.11, no.8, 2021 , pp. 36-41 More about this Journal
Abstract
Although the technology for prediction or analysis using artificial intelligence is constantly developing, a black-box problem does not interpret the decision-making process. Therefore, the decision process of the AI model can not be interpreted from the user's point of view, which leads to unreliable results. We investigated the problems of artificial intelligence and explainable artificial intelligence using Blockchain to solve them. Data from the decision-making process of artificial intelligence models, which can be explained with Blockchain, are stored in Blockchain with time stamps, among other things. Blockchain provides anti-counterfeiting of the stored data, and due to the nature of Blockchain, it allows free access to data such as decision processes stored in blocks. The difficulty of creating explainable artificial intelligence models is a large part of the complexity of existing models. Therefore, using the point cloud to increase the efficiency of 3D data processing and the processing procedures will shorten the decision-making process to facilitate an explainable artificial intelligence model. To solve the oracle problem, which may lead to data falsification or corruption when storing data in the Blockchain, a blockchain artificial intelligence problem was solved by proposing a blockchain-based explainable artificial intelligence model that passes through an intermediary in the storage process.
Keywords
Artificial Intelligence; Explanable Artificial Intelligence; Point Cloud; Blockchain; Oracle Problem;
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