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Easy-2-use long text NLP toolkit.

Project description

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Deep Long Text Learning Kit

Author: 吴子豪

开箱即用的长文本语义建模框架

安装

  • 使用 pip

    pip install -U deeplotx
    
  • 使用 uv (推荐)

    uv add -U deeplotx
    
  • 从 github 安装最新特性

    pip install -U git+https://github.com/vortezwohl/DeepLoTX.git
    

核心功能

  • 长文本嵌入

    • 基于通用 BERT 的长文本嵌入 (最大支持长度, 无限长, 通过 max_length 定义)

      from deeplotx import LongTextEncoder
      
      # 最大文本长度为 2048 个 tokens, 块大小为 512 个 tokens, 块间重叠部分为 64 个 tokens.
      encoder = LongTextEncoder(
          max_length=2048,
          chunk_size=512,
          overlapping=64
      )
      # 对 "我是吴子豪, 这是一个测试文本." 计算嵌入, 并展平.
      encoder.encode('我是吴子豪, 这是一个测试文本.', flatten=True, use_cache=True)
      

      输出:

      tensor([ 0.5163,  0.2497,  0.5896,  ..., -0.9815, -0.3095,  0.4232])
      
    • 基于 Longformer 的长文本嵌入 (最大支持长度 4096 个 tokens)

      from deeplotx import LongformerEncoder
      
      encoder = LongformerEncoder()
      encoder.encode('我是吴子豪, 这是一个测试文本.')
      
  • 相似性计算

    • 基于向量的相似性

      import deeplotx.similarity as sim
      
      vector_0, vector_1 = [1, 2, 3, 4], [4, 3, 2, 1]
      # 欧几里得距离
      distance_0 = sim.euclidean_similarity(vector_0, vector_1)
      print(distance_0)
      # 余弦距离
      distance_1 = sim.cosine_similarity(vector_0, vector_1)
      print(distance_1)
      # 切比雪夫距离
      distance_2 = sim.chebyshev_similarity(vector_0, vector_1)
      print(distance_2)
      

      输出:

      4.47213595499958
      0.33333333333333337
      3
      
    • 基于集合的相似性

      import deeplotx.similarity as sim
      
      set_0, set_1 = {1, 2, 3, 4}, {4, 5, 6, 7}
      # 杰卡德距离
      distance_0 = sim.jaccard_similarity(set_0, set_1)
      print(distance_0)
      # Ochiai 距离
      distance_1 = sim.ochiai_similarity(set_0, set_1)
      print(distance_1)
      # Dice 系数
      distance_2 = sim.dice_coefficient(set_0, set_1)
      print(distance_2)
      # Overlap 系数
      distance_3 = sim.overlap_coefficient(set_0, set_1)
      print(distance_3)
      

      输出:

      0.1428571428572653
      0.2500000000001875
      0.25000000000009376
      0.2500000000001875
      
    • 基于概率分布的相似性

      import deeplotx.similarity as sim
      
      dist_0, dist_1 = [0.3, 0.2, 0.1, 0.4], [0.2, 0.1, 0.3, 0.4]
      # 交叉熵
      distance_0 = sim.cross_entropy(dist_0, dist_1)
      print(distance_0)
      # KL 散度
      distance_1 = sim.kl_divergence(dist_0, dist_1)
      print(distance_1)
      # JS 散度
      distance_2 = sim.js_divergence(dist_0, dist_1)
      print(distance_2)
      # Hellinger 距离
      distance_3 = sim.hellinger_distance(dist_0, dist_1)
      print(distance_3)
      

      输出:

      0.3575654913778237
      0.15040773967762736
      0.03969123741566945
      0.20105866986400994
      
  • 预定义深度神经网络

    from deeplotx import (
        LinearRegression,  # 线性回归
        LogisticRegression,  # 逻辑回归 / 二分类 / 多标签分类
        SoftmaxRegression,  # Softmax 回归 / 多分类
        RecursiveSequential,  # 序列模型 / 循环神经网络
        AutoRegression  # 自回归模型
    )
    

    基础网络结构:

    from typing_extensions import override
    
    import torch
    from torch import nn
    
    from deeplotx.nn.base_neural_network import BaseNeuralNetwork
    
    
    class LinearRegression(BaseNeuralNetwork):
        def __init__(self, input_dim: int, output_dim: int, model_name: str | None = None):
            super().__init__(model_name=model_name)
            self.fc1 = nn.Linear(input_dim, 1024)
            self.fc1_to_fc4_res = nn.Linear(1024, 64)
            self.fc2 = nn.Linear(1024, 768)
            self.fc3 = nn.Linear(768, 128)
            self.fc4 = nn.Linear(128, 64)
            self.fc5 = nn.Linear(64, output_dim)
            self.parametric_relu_1 = nn.PReLU(num_parameters=1, init=5e-3)
            self.parametric_relu_2 = nn.PReLU(num_parameters=1, init=5e-3)
            self.parametric_relu_3 = nn.PReLU(num_parameters=1, init=5e-3)
            self.parametric_relu_4 = nn.PReLU(num_parameters=1, init=5e-3)
    
        @override
        def forward(self, x) -> torch.Tensor:
            fc1_out = self.parametric_relu_1(self.fc1(x))
            x = nn.LayerNorm(normalized_shape=1024, eps=1e-9)(fc1_out)
            x = torch.dropout(x, p=0.2, train=self.training)
            x = self.parametric_relu_2(self.fc2(x))
            x = nn.LayerNorm(normalized_shape=768, eps=1e-9)(x)
            x = torch.dropout(x, p=0.2, train=self.training)
            x = self.parametric_relu_3(self.fc3(x))
            x = torch.dropout(x, p=0.2, train=self.training)
            x = self.parametric_relu_4(self.fc4(x)) + self.fc1_to_fc4_res(fc1_out)
            x = self.fc5(x)
            return x
    

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