Roadmap » History » Version 27

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Marcus Pearce, 2014-03-28 01:19 PM


Roadmap

Installation

  • Remove absolute pathname in connect-to-database. (mtp-admin/music-data.lisp)
  • Create cache directories if they don't exist.

Data import

  • It is possible to import empty datasets, which cause an error when described.

Viewpoints

  • Zero barlengths sometimes cause divide by zero errors
  • A straightforward language for specifying viewpoints, including viewpoint schemas (e.g. interval, interval size), making system more data agnostic
  • Polyphonic viewpoints

Viewpoint selection

  • Memory errors sometimes occur with large viewpoints sets (e.g., Cpitch with no basis specified)
  • When decimal places are restricted for comparison, earlier systems are preferred within a round, so use full precision to choose between ties
  • Print trace information about VP sets being tested + mean IC values; record this to log file.
  • Optionally specify: min-links
  • More flexible way for user to specify constraints on viewpoint search:
    • Define labelled viewpoint classes
    • Pairs/triples of labels/wildcards specify acceptable combinations
    • User provides whitelist or blacklist spec
  • Provide recommended viewpoints for more than just cpitch, onset & bioi

Testing

  • Include unit testing code.

Longer-term goals

  • 'Pace' viewpoint: measure of information rate (bits/sec), analogous to flow in speech production.
  • A web service.
  • Compute predictive information (PI), expected PI and PI rate (as analogs to IC, entropy and entropy rate respectively).
  • Predict over more than one dataset.
  • Hierarchical structure: chunk common patterns into symbols.
Allow user to specify structure of model.
  • Determine order in which distributions are combined.
  • Specify weights for particular combinations, e.g. weighted viewpoints, or weighted memory stores.
  • Multiple memory stores.
  • Specify alternative context strategies (e.g., future context)
  • Provide some prepackaged models, e.g. the current model structure.
Efficiency:
  • Check/extend caching of models etc.
  • Use sampling to estimate mean IC during VP selection.
  • Optimise viewpoint selection based on match with existing IC values.