Download presentation
Presentation is loading. Please wait.
Published byJessie Franklin Modified over 9 years ago
1
The “Assembly Line” for the Information Age Human-Computer Cooperation for Large-Scale Product Classification Jianfu Chen Computer Science Department, Stony Brook University
2
Machines Transform Human History
3
People have always been seeking the optimal way of integrating machine and human labor.
4
20 th Century Ford Assembly Line Integrates Machine and Human Labor Efficiently
5
21 st Century – Information Age “Mass Production” of Information
6
We want to find the optimal ways to integrate machine and human intelligence. NOT all products could be produced fully automatically by machines – assembly line integrated machine & human labor NOT all information can be produced fully automatically by computers – We want to find optimal ways to integrate machine and human intelligence What’s the “Assembly Line” for the Information Age?
7
A Case Study: Large scale product classification Kindle Fire HD 8.9" 4G LTE Wireless 8.9" HD Display, Dolby Audio, Dual- Band Dual-Antenna Wi-Fi, 4G LTE, 32GB or 64GB Goal: optimally integrate computer and human effort Achieve a lower unit cost for product classification More precisely, optimize the accuracy-cost tradeoff
8
An “Assembly Line” for Human Computer Cooperation 3Com V.35 cable V.35 cable ( DTE ) - DB-50 (M) - M/34 (V.35) (M) - 10 ft 26121609 A list of K candidate classes System Accuracy Machine Accuracy Human Accuracy X Cost is Human labor cost, i.e., the salary paid to workers, which is proportional to the working time spent. =
9
A quick glance at Accuracy-Cost Relation
11
There is an optimal cost that gives the highest accuracy.
12
Towards a more realistic analysis of accuracy-cost relationship With the above “assembly line” model, human accuracy and working time are influenced by a set of factors – K – Task difficulty – Expertise I am familiar with office supplies, but not familiar with nuts and bolts. – Cognitive characteristics Careful, smart, quick Independent of the task
13
Use a probabilistic graphical model to capture the cognitive process of human classification A probabilistic graphical model shows how the above different factors interact with each other, and influence the accuracy and cost. Specifically, we use Bayesian Network, which characterizes the causal relationships of different factors.
14
Use a Bayesian Network to predict accuracy and cost
15
Not only visually intuitive, but also formal
16
Inference and learning
17
usage of the model Predict the accuracy-cost tradeoff – Given certain budget, what’s the highest accuracy we can achieve? – To achieve certain accuracy, what’s the lowest expected cost? How to charge customers? Optimally assign the workers to the tasks
18
Related Works time and motion study – Scientific management (Taylorism) Crowdsourcing – Amazon Mechanical Turk – learning worker expertise and accuracy Item Response Theory – Psychometrics IQ test, GRE, GMAT
19
Conclusion In information age, we need a new “assembly line” to integrate human and machine intelligence. We try to model human accuracy and working time by considering the interactions of a set of relevant factors, using a probabilistic graphical model. We use the model to predict the accuracy-cost tradeoff, decide how to charge customers, and optimally assign tasks to human workers.
20
Thank you!
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.