Semantic Interactive Learning for Text Classification: A Constructive Approach for Contextual Interactions

09/07/2022
by   Sebastian Kiefer, et al.
0

Interactive Machine Learning (IML) shall enable intelligent systems to interactively learn from their end-users, and is quickly becoming more and more important. Although it puts the human in the loop, interactions are mostly performed via mutual explanations that miss contextual information. Furthermore, current model-agnostic IML strategies like CAIPI are limited to 'destructive' feedback, meaning they solely allow an expert to prevent a learner from using irrelevant features. In this work, we propose a novel interaction framework called Semantic Interactive Learning for the text domain. We frame the problem of incorporating constructive and contextual feedback into the learner as a task to find an architecture that (a) enables more semantic alignment between humans and machines and (b) at the same time helps to maintain statistical characteristics of the input domain when generating user-defined counterexamples based on meaningful corrections. Therefore, we introduce a technique called SemanticPush that is effective for translating conceptual corrections of humans to non-extrapolating training examples such that the learner's reasoning is pushed towards the desired behavior. In several experiments, we show that our method clearly outperforms CAIPI, a state of the art IML strategy, in terms of Predictive Performance as well as Local Explanation Quality in downstream multi-class classification tasks.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/22/2018

"Why Should I Trust Interactive Learners?" Explaining Interactive Queries of Classifiers to Users

Although interactive learning puts the user into the loop, the learner r...
research
10/30/2022

XMD: An End-to-End Framework for Interactive Explanation-Based Debugging of NLP Models

NLP models are susceptible to learning spurious biases (i.e., bugs) that...
research
05/26/2023

DeepSI: Interactive Deep Learning for Semantic Interaction

In this paper, we design novel interactive deep learning methods to impr...
research
09/26/2022

Impact of Feedback Type on Explanatory Interactive Learning

Explanatory Interactive Learning (XIL) collects user feedback on visual ...
research
05/24/2023

From Interactive to Co-Constructive Task Learning

Humans have developed the capability to teach relevant aspects of new or...
research
06/28/2023

Increasing Performance And Sample Efficiency With Model-agnostic Interactive Feature Attributions

Model-agnostic feature attributions can provide local insights in comple...
research
05/13/2022

Interlock-Free Multi-Aspect Rationalization for Text Classification

Explanation is important for text classification tasks. One prevalent ty...

Please sign up or login with your details

Forgot password? Click here to reset