Published May 14, 2018
| Version v1
Publication
Boundary cost optimization for Alternate Test
Creators
Contributors
Description
Alternate Test has demonstrated in the last decade
that advanced machine-learning tools can leverage the accuracy
gap between functional test and indirect, or model-based, test. If a
regression approach is taken, a model should be trained for each
specification. The advantage is that the results are interpreted
just like performance measurements but the drawback is that
accuracy is required over the full variation range. On the other
hand, a classification approach can be seen as a wiser solution
since it locates the pass/fail boundary, which inherently contains
all the specification information, in the cheap measurement space.
Cost optimization due to imbalance between test escape and yield
loss is usually handled by guard-banding on specifications. This
is straightforward to translate to regression-based Alternate Test
but not for classification-based.
This paper shows that two different asymmetric approaches
consistently outperforms an off-the-shelf symmetric algorithm.
The first technique is based on manipulating the decision
threshold while the second technique directly builds an optimized
pass-fail boundary by considering different costs to penalize test
escapes and yield losses.
Abstract
Ministerio de Economia y Competitividad TEC2011-28302Additional details
Identifiers
- URL
- https://idus.us.es/handle//11441/74585
- URN
- urn:oai:idus.us.es:11441/74585
Origin repository
- Origin repository
- USE