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A Method to Prove the Existence of a Similarity

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Software Engineering Perspectives in Intelligent Systems (CoMeSySo 2020)

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Abstract

Each object will build its own vector space through naming and weighting its characteristics. Based on the vector space, it is possible to measure the similarity between objects where certain parts of an object no longer need to decipher its behavior by simply referring to the measured part of another object. In this case, the similarity measurement tool can streamline the process or reduce the complexity of processing data by referring to other object characteristics. However, there are many similarities in the used measurement. Each measurement has a meaning, and this requires proof of each measurement in common so that the meaning indicates the measurement function either in theory or computationally in simulation.

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Correspondence to Mahyuddin K. M. Nasution .

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Nasution, M.K.M. (2020). A Method to Prove the Existence of a Similarity. In: Silhavy, R., Silhavy, P., Prokopova, Z. (eds) Software Engineering Perspectives in Intelligent Systems. CoMeSySo 2020. Advances in Intelligent Systems and Computing, vol 1295. Springer, Cham. https://doi.org/10.1007/978-3-030-63319-6_21

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