The Design of Reciprocal Learning Between Human and Artificial Intelligence

要旨

The need for advanced automation and artificial intelligence (AI) in various fields, including text classification, has dramatically increased in the last decade, leaving us critically dependent on their performance and reliability. Yet, as we increasingly rely more on AI applications, their algorithms are becoming more nuanced, more complex, and less understandable precisely at a time we need to understand them better and trust them to perform as expected. Text classification in the medical and cybersecurity domains are good examples of this. Human experts lack the capacity to deal with the high volume and velocity of data that needs to be classified, and ML techniques are often unexplainable and lack the ability to capture the required context needed to make the right decision and take action. We propose a new abstract configuration of Human-Machine Learning (HML) that focuses on reciprocal learning, where the human and the AI are collaborating partners. We employ design-science research (DSR) to learn and design an application of the HML configuration, which incorporates software to support combining human and artificial intelligences. We define the HML configuration by its conceptual components and their function. We then describe the development of a system called Fusion that supports human-machine reciprocal learning. Using two case studies of text classification from the cyber domain, we evaluate Fusion and the proposed HML approach, demonstrating benefits and challenges. Our results show a clear ability of domain experts to improve the ML classification performance over time, while both human and machine, collaboratively, develop their conceptualization, i.e., their knowledge of classification. We generalize our insights from the DSR process as actionable principles for researchers and designers of 'human in the learning loop' systems. We conclude the paper by discussing HML configurations and the challenge of capturing and representing knowledge gained jointly by human and machine, an area we feel has great potential.

著者
Alexey Zagalsky
Tel Aviv University, Tel Aviv, Israel
Dov Te'eni
Tel Aviv University, Tel Aviv, Israel
Inbal Yahav
Tel Aviv University, Tel Aviv, Israel
David G. Schwartz
Bar-Ilan University, Ramat Gan, Israel
Gahl Silverman
Tel Aviv University, Tel Aviv, Israel
Daniel Cohen
Bar-Ilan University, Ramat Gan, Israel
Yossi Mann
Bar-Ilan University, Ramat Gan, Israel
Dafna Lewinsky
Bar-Ilan University, Ramat Gan, Israel
論文URL

https://doi.org/10.1145/3479587

動画

会議: CSCW2021

The 24th ACM Conference on Computer-Supported Cooperative Work and Social Computing

セッション: Human-AI Collaboration

Papers Room E
8 件の発表
2021-10-26 20:30:00
2021-10-26 22:00:00