Merging intelligent API responses using a proportional representation approach

T Ohtake, A Cummaudo, M Abdelrazek, R Vasa… - … Conference on Web …, 2019 - Springer
International Conference on Web Engineering, 2019Springer
Abstract Intelligent APIs, such as Google Cloud Vision or Amazon Rekognition, are
becoming evermore pervasive and easily accessible to developers to build applications.
Because of the stochastic nature that machine learning entails and disparate datasets used
in their training, the output from different APIs varies over time, with low reliability in some
cases when compared against each other. Merging multiple unreliable API responses from
multiple vendors may increase the reliability of the overall response, and thus the reliability …
Abstract
Intelligent APIs, such as Google Cloud Vision or Amazon Rekognition, are becoming evermore pervasive and easily accessible to developers to build applications. Because of the stochastic nature that machine learning entails and disparate datasets used in their training, the output from different APIs varies over time, with low reliability in some cases when compared against each other. Merging multiple unreliable API responses from multiple vendors may increase the reliability of the overall response, and thus the reliability of the intelligent end-product. We introduce a novel methodology – inspired by the proportional representation used in electoral systems – to merge outputs of different intelligent computer vision APIs provided by multiple vendors. Experiments show that our method outperforms both naive merge methods and traditional proportional representation methods by 0.015 F-measure.
Springer
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