Auto Classifier Explaining Customers a Machine-Learning Model

نویسندگان

  • Benjamin Adrian
  • Markus Ebbecke
  • Sebastian Ebert
چکیده

When explaining customers that the artificial intelligence approach of our products automatically adapts document classifiers on training documents by applying statistical machine-learning, their reaction is similar like if we would tell them about an artificial intelligence in car breaks. Most likely they would dislike it, because they want full control on their data processors. Hence, we sell the Auto Classifier approach, which is the transparent and explainable extension of the respective machine learning components. This demo description presents this approach of providing customers full controls over document classifiers, which is part of nearly all products within Insiders Technologies’ product line.

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تاریخ انتشار 2012