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      },
      {
        "__type": "SigParam",
        "__tag": 4030,
        "name": "nan_policy",
        "annotation": {
          "__type": "Empty",
          "__tag": 4031
        },
        "kind": "POSITIONAL_OR_KEYWORD",
        "default": "propagate"
      },
      {
        "__type": "SigParam",
        "__tag": 4030,
        "name": "alternative",
        "annotation": {
          "__type": "Empty",
          "__tag": 4031
        },
        "kind": "POSITIONAL_OR_KEYWORD",
        "default": "two-sided"
      },
      {
        "__type": "SigParam",
        "__tag": 4030,
        "name": "keepdims",
        "annotation": {
          "__type": "Empty",
          "__tag": 4031
        },
        "kind": "KEYWORD_ONLY",
        "default": "False"
      }
    ],
    "return_annotation": {
      "__type": "Empty",
      "__tag": 4031
    },
    "target_name": "ttest_rel"
  },
  "references": [
    "https://en.wikipedia.org/wiki/T-test#Dependent_t-test_for_paired_samples"
  ],
  "qa": "scipy.stats._stats_py:ttest_rel",
  "arbitrary": [],
  "local_refs": [
    "a",
    "alternative",
    "axis",
    "b",
    "keepdims",
    "nan_policy",
    "result"
  ]
}