| Literature DB >> 32707823 |
Arkadiusz Gardecki1,2, Michal Podpora1,2, Ryszard Beniak1,2, Bartlomiej Klin2, Sławomir Pochwała3.
Abstract
This paper presents a novel user experience optimization concept and method, named User Experience Sensor, applied within the Hybrid Intelligence System (HINT). The HINT system, defined as a combination of an extensive AI system and the possibility of attaching a human expert, is designed to be used by relational agents, which may have a physical form, such as a robot, a kiosk, be embodied in an avatar, or may also exist as only software. The proposed method focuses on automatic process evaluation as a common sensor for optimization of the user experience for every process stage and the indicator for human-expert automatic session activation. This functionality is realized by the User Experience Sensor, which constitutes one of main elements of the self-optimizing interaction system. The authors present the optimization mechanism of the HINT system as an analogy to the process of building a Tower of Hanoi. The proposed sensor evaluates the user experience and measures the user/employee efficiency at every stage of a given process, offering the user to choose other forms of information, interaction, or expert support. The designed HINT system is able to learn and self-optimize, making the entire process more intuitive and easy for each and every user individually. The HINT system with the proposed sensor, implemented in a window assembly facility, successfully reduced assembly time, increased employees' satisfaction, and assembly quality. The proposed approach can be implemented in numerous man-machine interaction applications.Entities:
Keywords: AI system; experience-centered paradigm; human supported systems; process control; user experience testing
Mesh:
Year: 2020 PMID: 32707823 PMCID: PMC7435367 DOI: 10.3390/s20154074
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Main components diagram of the Hybrid Intelligence System (HINT) system.
Figure 2Process mode with verification at the end of the cycle (lightly supervised).
Figure 3Process mode with stage verification during the cycle (heavily supervised).
Figure 4Sample Towers of Hanoi and their corresponding descriptions: (a) tower in which no stage had to be repeated, (b) tower with one stage repeated using two interaction methods, (c) tower with repeatedly changed form of obtaining information.
Figure 5Sample Towers of Hanoi and their corresponding descriptions: (a) tower with one stage repeated using two interaction methods, (b) tower after auto-optimization: suggesting the green block as the first/default interaction method.
Figure 6One of the testbed implementations for the proposed idea: (A) window assembly stand equipped with the speech- and touch-controlled HINT system, and (B) remote Avatar console.
Comparison of selected quantities describing a 20-stage process of wooden window manual assembly, performed by two employee groups, assisted by the HINT system: before and after optimization using stage analysis based on an analogy with the Towers of Hanoi.
| Average Number of Stages Exceeding the Limit | Average Number of Connections with Avatar | Average Avatar Involvement Time [s] | Average Total Process Time [min] | Average Process Quality (0–100%) | |
|---|---|---|---|---|---|
| Before Optimization | 3.2 | 1.9 | 62 s | 52 | 66 |
| After Optimization | 0.6 | 0.7 | 26 s | 46 | 72 |
Figure 7Comparison of selected quantities describing a 20-stage process of wooden window manual assembly, performed by untrained employees, assisted by the HINT system before optimization (blue), and after optimization, using stage analysis based on an analogy to the Tower of Hanoi (orange).