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JSON
Markus Cozowicz edited this page Feb 5, 2016
·
17 revisions
Disclaimer: for now it's C# only
The following JSON format can be ingested into VW:
- Top-level properties are considered features for the default namespace.
- Top-level non-features are considered namespaces.
- Features are JSON strings, integer, float, boolean, arrays of integers and/or floats.
- Top-level properties starting with _ are ignored, except if they match a special property (e.g. "_label", "_multi", "_text").
- Labels can be passed using top-level "_label" property. This is also supported for multiline examples, but the label needs to be part of one of the multiline examples.
- If the JSON value is either a string, integer or float is converted to a string and passed directly to VW label parser.
- If the JSON value is an object, the first property needs to match one of the JSON properties of SimpleLabel or ContextualBanditLabel.
- Special text handling through "_text": properties named "_text" are processed using string splitting and not string escaping (see sample below).
- Multiline examples as used by contextual bandits are specified by using the "_multi" property. Each entry itself is an example as described above and can optionally contain a label. The top-level properties are used for the optional shared example.
The C# layer can ingest
- JSON strings
- JSON.NET's JsonReader
- C# objects serializable to the above JSON format using JSON.NET serializing rules. Thus JsonProperty annotations are inspected and so on. This is particularly useful if one needs to score a given object, then serialize it JSON and train from the JSON serialization as it circumvents the de-serialization for the scoring part.
JSON | VW String |
---|---|
{
"f1":25,"f2":true,
"_aux":"some ignored info"
} |
| f1:25 f2 |
{
"ns1":{"location":"New York"},
"f2":[1,0.2,3]
} |
|ns1 New_York | :1 :.2 :.3 |
{
"ns1":{"location":"New York"},
"ns2":{"f2":3.4},"_label":1
} |
1 |ns1 New_York |ns2 f2:3.4 |
{
"ns1":{"location":"New York", "f2":3.4},
"_label":{"Label":2,"Weight":0.3}
} |
2 0.3 |ns1 New_York f2:3.4 |
{
"x":2,
"_text":"elections US iowa"
} |
| x:2 elections US iowa |
{
"UserAge":15,
"_multi":[
{"_text":"elections maine", "Source":"TV"},
{"Source":"www", "topic":4, "_label":"2:3:.3"}
]
} |
shared | UserAge:15 | elections maine SourceTV 2:3:.3 | Sourcewww Topic:4 |
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