AILGAPNov 9, 2018

An Overview of Computational Approaches for Interpretation Analysis

arXiv:1811.04028v21 citations
AI Analysis

This work addresses the need for a unified framework to analyze interpretation in both human and computer contexts, but it is incremental as it synthesizes existing approaches rather than proposing a novel method.

The paper tackles the problem of analyzing interpretation discrepancies, such as why individuals or computer models interpret data differently, by introducing a theoretical framework to connect existing computational approaches. It provides an overview of relevant methods and discusses common application areas, primarily for text and image data.

It is said that beauty is in the eye of the beholder. But how exactly can we characterize such discrepancies in interpretation? For example, are there any specific features of an image that makes person A regard an image as beautiful while person B finds the same image displeasing? Such questions ultimately aim at explaining our individual ways of interpretation, an intention that has been of fundamental importance to the social sciences from the beginning. More recently, advances in computer science brought up two related questions: First, can computational tools be adopted for analyzing ways of interpretation? Second, what if the "beholder" is a computer model, i.e., how can we explain a computer model's point of view? Numerous efforts have been made regarding both of these points, while many existing approaches focus on particular aspects and are still rather separate. With this paper, in order to connect these approaches we introduce a theoretical framework for analyzing interpretation, which is applicable to interpretation of both human beings and computer models. We give an overview of relevant computational approaches from various fields, and discuss the most common and promising application areas. The focus of this paper lies on interpretation of text and image data, while many of the presented approaches are applicable to other types of data as well.

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