Types of cost ppt @ mba 2009

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Types of cost ppt @ mba 2009

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Types of Cost

What are the types of cost that are involved in Inductive Learning?

In real-world applications, there are many different types of cost.

Most Machine Learning (ML) literature largely ignores all types of cost.

The only exception is Constant Error Cost.

Why is this important?

Many ML papers ignore many of the cost types. By ignoring methods of cost, ML does not work

most effectively in real life situations. A taxonomy may help to organize the literature on

cost-sensitive learning. Motivation is to inspire researchers to investigate all

types of cost in inductive concept learning in more depth.

Taxonomy

Cost of Misclassification of Errors Cost of Tests Cost of Teacher Cost of Intervention Cost of Unwanted Achievements Cost of Computation Cost of Cases Human-Computer Interaction Cost Cost of Instability

Constant Error Cost

1 2 … i1 0 1 1 12 1 0 1 1… 1 1 0 1j 1 1 1 0

1 2 … i1 1 0 0 02 0 1 0 0… 0 0 0 0j 0 0 0 1

Error-Rate Accuracy

Cost of Misclassification of Errors

Constant Error Cost Conditional Error Cost

Individual Case Time of Classification Classification of Other Cases Feature Value

Cost of Tests

Constant Cost Test Conditional Cost Test

Prior Test Selection Prior Test Results True Class of Case Test Side-Effects Individual Case Time of Test

Other Costs

Cost of Teacher Constant Conditional

Cost of Intervention Constant Conditional

Cost of Unwanted Achievements Constant Conditional

Cost of Instability

Cost of Computation

Static Complexity Size Complexity Structural Complexity

Dynamic Complexity Time Complexity Space Complexity

Training Complexity Testing Complexity

Cost of Cases

Batch Learner Incremental Learner

Human-Computer Interaction Cost (HCIC)

Data Engineering Parameter Setting Analysis of Learned Models Incorporating Domain Knowledge

Results

Presentation of Taxonomy Serves as a platform for organization of

literature on cost-sensitive learning Inspires research into under-investigated

types of cost.

Weak/Strong Points

STRONG – Interesting idea for incorporating different, mostly unconsidered costs into classification methods.

STRONG – May be more pragmatic in real-world scenarios.

STRONG – Good domain examples. WEAK – Lacks formalized support for the points in

the paper. WEAK – Sections of the paper were imbalanced. WEAK – No empirical evidence to support methods.

Suggestions for Improvements

Gather some empirical data to support the costing methods.

Recommend better ways for use of costing methods (rather than adding more classes).

Perhaps different weighting based on feature? Incorporation of a weighted cost matrix for

predictions.

Conclusions

Turney presents some interesting ideas for various costing methods.

Although these methods are not well supported, the ideas behind them will hopefully drive research in the area of costing methods for inductive concept learning.

This will possibly result in support for the methods.

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