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      Comparing heterogeneous entities using artificial neural networks of trainable weighted structural components and machine-learned activation functions

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          Abstract

          To compare entities of differing types and structural components, the artificial neural network paradigm was used to cross-compare structural components between heterogeneous documents. Trainable weighted structural components were input into machine-learned activation functions of the neurons. The model was used for matching news articles and videos, where the inputs and activation functions respectively consisted of term vectors and cosine similarity measures between the weighted structural components. The model was tested with different weights, achieving as high as 59.2% accuracy for matching videos to news articles. A mobile application user interface for recommending related videos for news articles was developed to demonstrate consumer value, including its potential usefulness for cross-selling products from unrelated categories.

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          Author and article information

          Journal
          09 January 2018
          Article
          1801.03143
          6a183582-d827-4c86-bd5f-d89f39b559ba

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          stat.ML cs.AI cs.IR cs.LG cs.NE

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