Traditional methods for efficient text entry are based on prediction. Prediction requires a constant context-shift between entering text and selecting or verifying the predictions. Previous research has shown that the advantages offered by prediction are usually eliminated by the cognitive load associated with such context-switching. We present a novel approach that relies on compression. Users are required to compress text using a very simple abbreviation technique that yields an average keystrok reduction of 26.4%. Input text is automatically decoded using weighted finite-state transducers, incorporating both word-based and letter-based n-gram language models. Decoding yields a residual error rate of 3.3%. User experiments show that this ...
We consider re-representing the alphabet so that a representation of a character re ects its propert...
Semistatic word-based byte-oriented compression codes are known to be attractive alternatives to com...
International audienceThe originality of this work leads in tackling text compression using an unsup...
Traditional methods for efficient text entry are based on prediction. Prediction requires a constant...
We address the problem of improving the efficiency of natural language text input under degraded con...
We address the problem of improving the efficiency of natural language text input under degraded con...
We address the problem of improving the efficiency of natural language text input un-der degraded co...
Typing every character in a text message may require more time or effort than strictly necessary. Sk...
The best general-purpose compression schemes make their gains by estimating a probability distributi...
AbstractUsers with reduced physical functioning such as ALS patients need more time and effort to op...
People with some form of speech- or motor-impairments usually use a high-tech augmentative and alter...
Language model in Natural Language Processing is one of the most important fields carried out in the...
Word-based context models for text compression have the capacity to outperform more simple character...
Semistatic word-based byte-oriented compressors are known to be attractive alternatives to compress ...
A novel compression-based toolkit for modelling and processing natural language text is described. T...
We consider re-representing the alphabet so that a representation of a character re ects its propert...
Semistatic word-based byte-oriented compression codes are known to be attractive alternatives to com...
International audienceThe originality of this work leads in tackling text compression using an unsup...
Traditional methods for efficient text entry are based on prediction. Prediction requires a constant...
We address the problem of improving the efficiency of natural language text input under degraded con...
We address the problem of improving the efficiency of natural language text input under degraded con...
We address the problem of improving the efficiency of natural language text input un-der degraded co...
Typing every character in a text message may require more time or effort than strictly necessary. Sk...
The best general-purpose compression schemes make their gains by estimating a probability distributi...
AbstractUsers with reduced physical functioning such as ALS patients need more time and effort to op...
People with some form of speech- or motor-impairments usually use a high-tech augmentative and alter...
Language model in Natural Language Processing is one of the most important fields carried out in the...
Word-based context models for text compression have the capacity to outperform more simple character...
Semistatic word-based byte-oriented compressors are known to be attractive alternatives to compress ...
A novel compression-based toolkit for modelling and processing natural language text is described. T...
We consider re-representing the alphabet so that a representation of a character re ects its propert...
Semistatic word-based byte-oriented compression codes are known to be attractive alternatives to com...
International audienceThe originality of this work leads in tackling text compression using an unsup...