• DocumentCode
    26338
  • Title

    Neural Network Approaches for Noisy Language Modeling

  • Author

    Jun Li ; Ouazzane, Karim ; Kazemian, Hassan B. ; Afzal, Muhammad Sajid

  • Author_Institution
    Gray Inst. for Radiat. Oncology & Biol., Univ. of Oxford, Oxford, UK
  • Volume
    24
  • Issue
    11
  • fYear
    2013
  • fDate
    Nov. 2013
  • Firstpage
    1773
  • Lastpage
    1784
  • Abstract
    Text entry from people is not only grammatical and distinct, but also noisy. For example, a user´s typing stream contains all the information about the user´s interaction with computer using a QWERTY keyboard, which may include the user´s typing mistakes as well as specific vocabulary, typing habit, and typing performance. In particular, these features are obvious in disabled users´ typing streams. This paper proposes a new concept called noisy language modeling by further developing information theory and applies neural networks to one of its specific application-typing stream. This paper experimentally uses a neural network approach to analyze the disabled users´ typing streams both in general and specific ways to identify their typing behaviors and subsequently, to make typing predictions and typing corrections. In this paper, a focused time-delay neural network (FTDNN) language model, a time gap model, a prediction model based on time gap, and a probabilistic neural network model (PNN) are developed. A 38% first hitting rate (HR) and a 53% first three HR in symbol prediction are obtained based on the analysis of a user´s typing history through the FTDNN language modeling, while the modeling results using the time gap prediction model and the PNN model demonstrate that the correction rates lie predominantly in between 65% and 90% with the current testing samples, and 70% of all test scores above basic correction rates, respectively. The modeling process demonstrates that a neural network is a suitable and robust language modeling tool to analyze the noisy language stream. The research also paves the way for practical application development in areas such as informational analysis, text prediction, and error correction by providing a theoretical basis of neural network approaches for noisy language modeling.
  • Keywords
    handicapped aids; information theory; natural language processing; neural nets; probability; FTDNN language model; HR; PNN; application-typing stream; disabled user typing streams; hitting rate; information theory; neural network approach; noisy language modeling; probabilistic neural network model; symbol prediction; text entry; time gap prediction model; time-delay neural network language model; typing behaviors; typing corrections; typing predictions; $n$-gram; Backpropagation; correction; first three hitting rate; focused time-delay; prediction; probabilistic neural network; time gap; typing stream;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2013.2263557
  • Filename
    6553431