{
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"source": [
"# Обзор базовых подходов к решению задачи Uplift Моделирования\n",
"\n",
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"
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\n", "\n", "И тут вы начинаете понимать, что продукт и без того популярный, что без коммуникации продукт достаточно часто устанавливается клиентами, что обычная бинарная классификация обнаружит много таких клиентов, а стоимость коммуникация для нас критична...\n", "\n", "Исторически, по воздействию коммуникации маркетологи разделяют всех клиентов на 4 категории:\n", "\n", "\n", " \n", "
\n", "\n", "1. **Спящая собака** - человек, который будет реагировать негативно, если с ним прокоммуницировать. Яркий пример: клиенты, которые забыли про платную подписку. Получив напоминание об этом, они обязательно ее отключат. Но если их не трогать, то клиенты по-прежнему будут приносить деньги.\n", "2. **Потерянный** - человек, который не совершит целевое действие независимо от коммуникаций. Взаимодействие с такими клиентами не приносит дополнительного дохода, но создает дополнительные затраты.\n", "3. **Уверенный (Лояльный)** - человек, который будет реагировать положительно, несмотря ни на что - самый лояльный вид клиентов. По аналогии с предыдущим пунктом, такие клиенты также расходуют ресурсы. Однако в данном случае расходы гораздо больше, так как **уверенные** еще и пользуются маркетинговым предложением (скидками, купонами и другое).\n", "4. **Убеждаемый** - это человек, который положительно реагирует на предложение, но при его отсутствии не выполнил бы целевого действия. Это те люди, которых мы хотели бы определить нашей моделью, чтобы с ними прокоммуницировать.\n", "\n", "Стоит отметить, что в зависимости от клиентской базы и особенностей компании возможно отсутствие некоторых из этих типов клиентов.\n", "\n", "Таким образом, в данной задаче нам хочется не просто спрогнозировать вероятность выполнения целевого действия, а сосредоточить рекламный бюджет на клиентах, которые выполнят целевое действие только при нашем взаимодействии. Иначе говоря, для каждого клиента хочется отдельно оценить две условные вероятности:\n", "\n", "* Выполнение целевого действия при нашем воздействии на клиента. \n", " Таких клиентов будем относить к **тестовой группе (aka treatment)**: $P^T = P(Y=1 | W = 1)$,\n", "* Выполнение целевого действия без воздействия на клиента. \n", " Таких клиентов будем относить к **контрольной группе (aka control)**: $P^C = P(Y=1 | W = 0)$,\n", "\n", "где $Y$ - бинарный флаг выполнения целевого действия, $W$ - бинарный флаг наличия коммуникации (в англоязычной литературе - _treatment_)\n", "\n", "Сам же причинно-следственный эффект **называется uplift** и оценивается как разность двух этих вероятностей:\n", "\n", "$$ uplift = P^T - P^C = P(Y = 1 | W = 1) - P(Y = 1 | W = 0)$$\n", "\n", "Прогнозирование uplift - это задача причинно-следственного вывода. Дело в том, что нужно оценить разницу между двумя событиями, которые являются взаимоисключающими для конкретного клиента (либо мы взаимодействуем с человеком, либо нет; нельзя одновременно совершить два этих действия). Именно поэтому для построения моделей uplift предъявляются дополнительные требования к исходным данным.\n", "\n", "Для получения обучающей выборки для моделирования uplift необходимо провести эксперимент: \n", "1. Случайным образом разбить репрезентативную часть клиентской базы на тестовую и контрольную группу\n", "2. Прокоммуницировать с тестовой группой\n", "\n", "Данные, полученные в рамках дизайна такого пилота, позволят нам в дальнейшем построить модель прогнозирования uplift. Стоит также отметить, что эксперимент должен быть максимально похож на кампнию, которая будет запущена позже в более крупном масштабе. Единственным отличием эксперимента от кампании должен быть тот факт, что во время пилота для взаимодействия мы выбираем случайных клиентов, а во время кампании - на основе спрогнозированного значения Uplift. Если кампания, которая в конечном итоге запускается, существенно отличается от эксперимента, используемого для сбора данных о выполнении целевых действий клиентами, то построенная модель может быть менее надежной и точной.\n", "\n", "Итак, подходы к прогнозированию uplift направлены на оценку чистого эффекта от воздействия маркетинговых кампаний на клиентов.\n", "\n", "**Подробнее про uplift можно прочитать в [цикле статьй на хабре](https://habr.com/ru/company/ru_mts/blog/485980/).**\n", "\n", "Все классические подходы к моделированию uplift можно разделить на два класса:\n", "1. Подходы с применением одной моделью\n", "2. Подходы с применением двух моделей\n", "\n", "Скачаем и распакуем [данные конкурса RetailHero.ai](https://retailhero.ai/c/uplift_modeling/overview):" ] }, { "cell_type": "code", "execution_count": 1, "metadata": { "ExecuteTime": { "end_time": "2020-04-28T09:24:37.492036Z", "start_time": "2020-04-28T09:24:37.488584Z" }, "colab": { "base_uri": "https://localhost:8080/", "height": 712 }, "colab_type": "code", "id": "NDBSdnM05Nti", "outputId": "8508357f-2748-49d4-dff4-ff4cc54baf54" }, "outputs": [], "source": [ "import urllib.request\n", "\n", "url = 'https://drive.google.com/u/0/uc?id=1fkxNmihuS15kk0PP0QcphL_Z3_z8LLeb&export=download'\n", "urllib.request.urlretrieve(url, '/content/retail_hero.zip')\n", "\n", "!unzip /content/retail_hero.zip\n", "!pip install scikit-uplift==0.1.1 catboost=0.22" ] }, { "cell_type": "markdown", "metadata": { "colab_type": "text", "id": "L2_hAJho6IHC" }, "source": [ "Импортируем нужные библиотеки и предобработаем данные:" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "ExecuteTime": { "end_time": "2020-04-28T09:24:40.783897Z", "start_time": "2020-04-28T09:24:37.503470Z" }, "colab": {}, "colab_type": "code", "id": "VT5IYIZU3QGx" }, "outputs": [], "source": [ "%matplotlib inline\n", "\n", "import pandas as pd; pd.set_option('display.max_columns', None)\n", "from sklearn.model_selection import train_test_split\n", "\n", "\n", "# Чтение данных\n", "df_clients = pd.read_csv('/content/uplift_data/clients.csv', index_col='client_id')\n", "df_train = pd.read_csv('/content/uplift_data/uplift_train.csv', index_col='client_id')\n", "df_test = pd.read_csv('/content/uplift_data/uplift_test.csv', index_col='client_id')\n", "\n", "# Извлечение признаков\n", "df_features = df_clients.copy()\n", "df_features['first_issue_time'] = \\\n", " (pd.to_datetime(df_features['first_issue_date'])\n", " - pd.Timestamp('1970-01-01')) // pd.Timedelta('1s')\n", "df_features['first_redeem_time'] = \\\n", " (pd.to_datetime(df_features['first_redeem_date'])\n", " - pd.Timestamp('1970-01-01')) // pd.Timedelta('1s')\n", "df_features['issue_redeem_delay'] = df_features['first_redeem_time'] \\\n", " - df_features['first_issue_time']\n", "df_features = df_features.drop(['first_issue_date', 'first_redeem_date'], axis=1)\n", "\n", "indices_train = df_train.index\n", "indices_test = df_test.index\n", "indices_learn, indices_valid = train_test_split(df_train.index, test_size=0.3, random_state=123)" ] }, { "cell_type": "markdown", "metadata": { "colab_type": "text", "id": "qS78JgIO3QHP" }, "source": [ "Для удобства объявим некоторые переменные:" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "ExecuteTime": { "end_time": "2020-04-28T09:24:42.100096Z", "start_time": "2020-04-28T09:24:40.786498Z" }, "colab": {}, "colab_type": "code", "id": "VsvmpLd13QHW" }, "outputs": [], "source": [ "X_train = df_features.loc[indices_learn, :]\n", "y_train = df_train.loc[indices_learn, 'target']\n", "treat_train = df_train.loc[indices_learn, 'treatment_flg']\n", "\n", "X_val = df_features.loc[indices_valid, :]\n", "y_val = df_train.loc[indices_valid, 'target']\n", "treat_val = df_train.loc[indices_valid, 'treatment_flg']\n", "\n", "X_train_full = df_features.loc[indices_train, :]\n", "y_train_full = df_train.loc[:, 'target']\n", "treat_train_full = df_train.loc[:, 'treatment_flg']\n", "\n", "X_test = df_features.loc[indices_test, :]\n", "\n", "cat_features = ['gender']\n", "\n", "models_results = {\n", " 'approach': [],\n", " 'uplift@30%': []\n", "}" ] }, { "cell_type": "markdown", "metadata": { "colab_type": "text", "id": "ZUBv8tHI3QHu" }, "source": [ "## 1. Подходы с одной моделью\n", "\n", "### 1.1 Одна модель с признаком коммуникации\n", "\n", "Самое простое и интуитивное решение: модель обучается одновременно на двух группах, при этом бинарный флаг коммуникации выступает в качестве дополнительного признака. Каждый объект из тестовой выборки скорим дважды: с флагом коммуникации равным 1 и равным 0. Вычитая вероятности по каждому наблюдению, получим искомы uplift.\n", "\n", "\n", "\n", " \n", "
" ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "ExecuteTime": { "end_time": "2020-04-28T09:24:44.483576Z", "start_time": "2020-04-28T09:24:42.102707Z" }, "colab": { "base_uri": "https://localhost:8080/", "height": 359 }, "colab_type": "code", "id": "Pqquz4nU3QHx", "outputId": "fadb441f-902f-4523-9c18-79b77f08693e" }, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "\n", " | feature_name | \n", "feature_score | \n", "
---|---|---|
0 | \n", "first_redeem_time | \n", "65.214393 | \n", "
1 | \n", "issue_redeem_delay | \n", "12.564364 | \n", "
2 | \n", "age | \n", "7.891613 | \n", "
3 | \n", "first_issue_time | \n", "7.262806 | \n", "
4 | \n", "treatment | \n", "4.362077 | \n", "
5 | \n", "gender | \n", "2.704747 | \n", "
\n", " \n", "
" ] }, { "cell_type": "code", "execution_count": 7, "metadata": { "ExecuteTime": { "end_time": "2020-04-28T09:24:47.941480Z", "start_time": "2020-04-28T09:24:45.719641Z" }, "colab": { "base_uri": "https://localhost:8080/", "height": 359 }, "colab_type": "code", "id": "S9mOrhPg3QJC", "outputId": "e1a8b38f-65f1-429d-da70-cc663e788324" }, "outputs": [ { "data": { "image/png": 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\n", 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" ] }, { "cell_type": "code", "execution_count": 8, "metadata": { "ExecuteTime": { "end_time": "2020-04-28T09:24:50.571779Z", "start_time": "2020-04-28T09:24:47.944822Z" }, "colab": { "base_uri": "https://localhost:8080/", "height": 359 }, "colab_type": "code", "id": "C654kkas3QLR", "outputId": "c81b0679-ecd4-44cb-e564-d81ec16a6de8" }, "outputs": [ { "data": { "image/png": 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\n", "text/plain": [ "\n", " | approach | \n", "uplift@30% | \n", "
---|---|---|
1 | \n", "ClassTransformation | \n", "0.061775 | \n", "
2 | \n", "TwoModels | \n", "0.051637 | \n", "
3 | \n", "TwoModels_ddr_control | \n", "0.047793 | \n", "
0 | \n", "SoloModel | \n", "0.041614 | \n", "
4 | \n", "TwoModels_ddr_treatment | \n", "0.033752 | \n", "
\n", " | feature_name | \n", "feature_score | \n", "
---|---|---|
0 | \n", "first_redeem_time | \n", "79.642055 | \n", "
1 | \n", "age | \n", "8.808502 | \n", "
2 | \n", "issue_redeem_delay | \n", "5.113192 | \n", "
3 | \n", "first_issue_time | \n", "3.558522 | \n", "
4 | \n", "gender | \n", "2.877728 | \n", "