Improved spelling and wording
Signed-off-by: Jim Martens <github@2martens.de>
This commit is contained in:
14
body.tex
14
body.tex
@ -19,7 +19,7 @@ figure out by themselves what connections are necessary for that.
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This feature is also their Achilles heel: it makes them effectively
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This feature is also their Achilles heel: it makes them effectively
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black boxes and prevents any answers to questions of causality.
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black boxes and prevents any answers to questions of causality.
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However, these questions of causility are of enormous consequence when
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However, these questions of causality are of enormous consequence when
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results of neural networks are used to make life changing decisions:
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results of neural networks are used to make life changing decisions:
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Is a correlation enough to bring forth negative consequences
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Is a correlation enough to bring forth negative consequences
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for a particular person? And if so, what is the possible defence
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for a particular person? And if so, what is the possible defence
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@ -32,7 +32,7 @@ Such an explanation must come from the network or an attached piece
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of technology to allow adoption in mass. Obviously this setting
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of technology to allow adoption in mass. Obviously this setting
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poses the question, how such an endeavour can be achieved.
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poses the question, how such an endeavour can be achieved.
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For neural networks there are fundamentally two type of tasks:
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For neural networks there are fundamentally two types of tasks:
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regression and classification. Regression deals with any case
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regression and classification. Regression deals with any case
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where the goal for the network is to come close to an ideal
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where the goal for the network is to come close to an ideal
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function that connects all data points. Classification, however,
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function that connects all data points. Classification, however,
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@ -72,7 +72,7 @@ that the network was never trained on a particular type of object.
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Therefore, it would be impossible for them to identify the output
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Therefore, it would be impossible for them to identify the output
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of the network as false positive.
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of the network as false positive.
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This goes back to the need for automatic explanation. Such a system
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This reaffirms the need for automatic explanation. Such a system
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should by itself recognise that the given object is unknown and
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should by itself recognise that the given object is unknown and
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hence mark any classification result of the network as meaningless.
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hence mark any classification result of the network as meaningless.
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Technically there are two slightly different approaches that deal
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Technically there are two slightly different approaches that deal
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@ -114,9 +114,11 @@ novelty score.
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Auto-encoders work well for data sets like MNIST~\cite{Deng2012}
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Auto-encoders work well for data sets like MNIST~\cite{Deng2012}
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but perform poorly on challenging real world data sets
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but perform poorly on challenging real world data sets
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like MS COCO~\cite{Lin2014}. Therefore, a comparison between
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like MS COCO~\cite{Lin2014}, complicating any potential comparison between
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model uncertainty and novelty detection is considered out of
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them and object detection networks like SSD.
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scope for this thesis.
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Therefore, a comparison between model uncertainty with a network like
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SSD and novelty detection with auto-encoders is considered out of scope
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for this thesis.
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Miller et al.~\cite{Miller2018} used an SSD pre-trained on COCO
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Miller et al.~\cite{Miller2018} used an SSD pre-trained on COCO
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without further fine-tuning on the SceneNet RGB-D data
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without further fine-tuning on the SceneNet RGB-D data
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