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import json |
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import logging |
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import os |
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import random |
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from collections import Counter, defaultdict |
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import numpy as np |
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import pandas as pd |
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from scipy.stats import chisquare, ranksums |
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from sklearn.metrics import accuracy_score, f1_score |
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from sklearn.model_selection import StratifiedKFold, train_test_split |
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from . import perturber_utils as pu |
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logger = logging.getLogger(__name__) |
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def downsample_and_shuffle(data, max_ncells, max_ncells_per_class, cell_state_dict): |
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data = data.shuffle(seed=42) |
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num_cells = len(data) |
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if max_ncells is not None: |
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if num_cells > max_ncells: |
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data = data.select([i for i in range(max_ncells)]) |
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if max_ncells_per_class is not None: |
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class_labels = data[cell_state_dict["state_key"]] |
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random.seed(42) |
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subsample_indices = subsample_by_class(class_labels, max_ncells_per_class) |
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data = data.select(subsample_indices) |
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return data |
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def subsample_by_class(labels, N): |
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label_indices = defaultdict(list) |
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for idx, label in enumerate(labels): |
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label_indices[label].append(idx) |
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selected_indices = [] |
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for label, indices in label_indices.items(): |
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if len(indices) > N: |
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selected_indices.extend(random.sample(indices, N)) |
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else: |
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selected_indices.extend(indices) |
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return selected_indices |
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def rename_cols(data, state_key): |
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data = data.rename_column(state_key, "label") |
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return data |
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def validate_and_clean_cols(train_data, eval_data, classifier): |
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if classifier == "cell": |
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label_col = "label" |
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elif classifier == "gene": |
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label_col = "labels" |
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cols_to_keep = [label_col] + ["input_ids", "length"] |
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if label_col not in train_data.column_names: |
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logger.error(f"train_data must contain column {label_col} with class labels.") |
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raise |
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else: |
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train_data = remove_cols(train_data, cols_to_keep) |
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if eval_data is not None: |
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if label_col not in eval_data.column_names: |
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logger.error( |
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f"eval_data must contain column {label_col} with class labels." |
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) |
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raise |
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else: |
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eval_data = remove_cols(eval_data, cols_to_keep) |
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return train_data, eval_data |
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def remove_cols(data, cols_to_keep): |
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other_cols = list(data.features.keys()) |
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other_cols = [ele for ele in other_cols if ele not in cols_to_keep] |
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data = data.remove_columns(other_cols) |
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return data |
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def remove_rare(data, rare_threshold, label, nproc): |
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if rare_threshold > 0: |
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total_cells = len(data) |
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label_counter = Counter(data[label]) |
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nonrare_label_dict = { |
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label: [k for k, v in label_counter if (v / total_cells) > rare_threshold] |
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} |
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data = pu.filter_by_dict(data, nonrare_label_dict, nproc) |
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return data |
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def label_classes(classifier, data, gene_class_dict, nproc): |
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if classifier == "cell": |
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label_set = set(data["label"]) |
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elif classifier == "gene": |
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def if_contains_label(example): |
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a = pu.flatten_list(gene_class_dict.values()) |
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b = example["input_ids"] |
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return not set(a).isdisjoint(b) |
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data = data.filter(if_contains_label, num_proc=nproc) |
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label_set = gene_class_dict.keys() |
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if len(data) == 0: |
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logger.error( |
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"No cells remain after filtering for target genes. Check target gene list." |
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) |
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raise |
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class_id_dict = dict(zip(label_set, [i for i in range(len(label_set))])) |
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id_class_dict = {v: k for k, v in class_id_dict.items()} |
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def classes_to_ids(example): |
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if classifier == "cell": |
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example["label"] = class_id_dict[example["label"]] |
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elif classifier == "gene": |
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example["labels"] = label_gene_classes( |
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example, class_id_dict, gene_class_dict |
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) |
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return example |
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data = data.map(classes_to_ids, num_proc=nproc) |
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return data, id_class_dict |
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def label_gene_classes(example, class_id_dict, gene_class_dict): |
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return [ |
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class_id_dict.get(gene_class_dict.get(token_id, -100), -100) |
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for token_id in example["input_ids"] |
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] |
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def prep_gene_classifier_train_eval_split( |
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data, |
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targets, |
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labels, |
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train_index, |
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eval_index, |
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max_ncells, |
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iteration_num, |
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num_proc, |
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balance=False, |
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): |
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train_data = prep_gene_classifier_split( |
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data, |
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targets, |
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labels, |
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train_index, |
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"train", |
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max_ncells, |
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iteration_num, |
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num_proc, |
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balance, |
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) |
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eval_data = prep_gene_classifier_split( |
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data, |
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targets, |
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labels, |
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eval_index, |
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"eval", |
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max_ncells, |
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iteration_num, |
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num_proc, |
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balance, |
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) |
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return train_data, eval_data |
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def prep_gene_classifier_split( |
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data, |
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targets, |
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labels, |
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index, |
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subset_name, |
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max_ncells, |
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iteration_num, |
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num_proc, |
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balance=False, |
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): |
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targets = np.array(targets) |
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labels = np.array(labels) |
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targets_subset = targets[index] |
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labels_subset = labels[index] |
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label_dict_subset = dict(zip(targets_subset, labels_subset)) |
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def if_contains_subset_label(example): |
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a = targets_subset |
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b = example["input_ids"] |
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return not set(a).isdisjoint(b) |
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logger.info(f"Filtering data for {subset_name} genes in split {iteration_num}") |
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subset_data = data.filter(if_contains_subset_label, num_proc=num_proc) |
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logger.info( |
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f"Filtered {round((1-len(subset_data)/len(data))*100)}%; {len(subset_data)} remain\n" |
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) |
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if (subset_name == "train") and (balance is True): |
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subset_data, label_dict_subset = balance_gene_split( |
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subset_data, label_dict_subset, num_proc |
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) |
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subset_data = downsample_and_shuffle(subset_data, max_ncells, None, None) |
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def subset_classes_to_ids(example): |
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example["labels"] = [ |
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label_dict_subset.get(token_id, -100) for token_id in example["input_ids"] |
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] |
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return example |
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subset_data = subset_data.map(subset_classes_to_ids, num_proc=num_proc) |
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return subset_data |
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def prep_gene_classifier_all_data( |
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data, targets, labels, max_ncells, num_proc, balance=False |
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): |
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targets = np.array(targets) |
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labels = np.array(labels) |
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label_dict_train = dict(zip(targets, labels)) |
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def if_contains_train_label(example): |
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a = targets |
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b = example["input_ids"] |
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return not set(a).isdisjoint(b) |
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logger.info("Filtering training data for genes to classify.") |
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train_data = data.filter(if_contains_train_label, num_proc=num_proc) |
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logger.info( |
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f"Filtered {round((1-len(train_data)/len(data))*100)}%; {len(train_data)} remain\n" |
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) |
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if balance is True: |
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train_data, label_dict_train = balance_gene_split( |
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train_data, label_dict_train, num_proc |
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) |
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train_data = downsample_and_shuffle(train_data, max_ncells, None, None) |
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def train_classes_to_ids(example): |
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example["labels"] = [ |
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label_dict_train.get(token_id, -100) for token_id in example["input_ids"] |
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] |
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return example |
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train_data = train_data.map(train_classes_to_ids, num_proc=num_proc) |
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return train_data |
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def balance_gene_split(subset_data, label_dict_subset, num_proc): |
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label0_counts, label1_counts = count_genes_for_balancing( |
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subset_data, label_dict_subset, num_proc |
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) |
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label_ratio_0to1 = label0_counts / label1_counts |
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if 8 / 10 <= label_ratio_0to1 <= 10 / 8: |
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logger.info( |
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"Gene sets were already balanced within 0.8-1.25 fold and did not require balancing.\n" |
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) |
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return subset_data, label_dict_subset |
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else: |
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label_ratio_0to1_orig = label_ratio_0to1 + 0 |
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label_dict_subset_orig = label_dict_subset.copy() |
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max_ntrials = 25 |
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boost = 1 |
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if label_ratio_0to1 > 10 / 8: |
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for i in range(max_ntrials): |
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label0 = 0 |
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label0_genes = [k for k, v in label_dict_subset.items() if v == label0] |
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label0_ngenes = len(label0_genes) |
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label0_nremove = max( |
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1, |
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int( |
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np.floor( |
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label0_ngenes - label0_ngenes / (label_ratio_0to1 * boost) |
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) |
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), |
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) |
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random.seed(i) |
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label0_remove_genes = random.sample(label0_genes, label0_nremove) |
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label_dict_subset_new = { |
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k: v |
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for k, v in label_dict_subset.items() |
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if k not in label0_remove_genes |
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} |
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label0_counts, label1_counts = count_genes_for_balancing( |
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subset_data, label_dict_subset_new, num_proc |
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) |
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label_ratio_0to1 = label0_counts / label1_counts |
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if 8 / 10 <= label_ratio_0to1 <= 10 / 8: |
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return filter_data_balanced_genes( |
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subset_data, label_dict_subset_new, num_proc |
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) |
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elif label_ratio_0to1 > 10 / 8: |
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boost = boost * 1.1 |
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elif label_ratio_0to1 < 8 / 10: |
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boost = boost * 0.9 |
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else: |
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for i in range(max_ntrials): |
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label1 = 1 |
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label1_genes = [k for k, v in label_dict_subset.items() if v == label1] |
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label1_ngenes = len(label1_genes) |
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label1_nremove = max( |
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1, |
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int( |
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np.floor( |
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label1_ngenes |
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- label1_ngenes / ((1 / label_ratio_0to1) * boost) |
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) |
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), |
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) |
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random.seed(i) |
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label1_remove_genes = random.sample(label1_genes, label1_nremove) |
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label_dict_subset_new = { |
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k: v |
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for k, v in label_dict_subset.items() |
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if k not in label1_remove_genes |
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} |
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label0_counts, label1_counts = count_genes_for_balancing( |
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subset_data, label_dict_subset_new, num_proc |
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) |
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label_ratio_0to1 = label0_counts / label1_counts |
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if 8 / 10 <= label_ratio_0to1 <= 10 / 8: |
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return filter_data_balanced_genes( |
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subset_data, label_dict_subset_new, num_proc |
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) |
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elif label_ratio_0to1 < 8 / 10: |
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boost = boost * 1.1 |
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elif label_ratio_0to1 > 10 / 8: |
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boost = boost * 0.9 |
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assert i + 1 == max_ntrials |
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if (label_ratio_0to1 <= label_ratio_0to1_orig < 8 / 10) or ( |
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10 / 8 > label_ratio_0to1_orig >= label_ratio_0to1 |
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): |
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label_ratio_0to1 = label_ratio_0to1_orig |
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label_dict_subset_new = label_dict_subset_orig |
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logger.warning( |
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f"Gene sets were not able to be balanced within 0.8-1.25 fold after {max_ntrials} trials. Imbalance level: {label_ratio_0to1}\n" |
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) |
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return filter_data_balanced_genes(subset_data, label_dict_subset_new, num_proc) |
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def count_genes_for_balancing(subset_data, label_dict_subset, num_proc): |
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def count_targets(example): |
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labels = [ |
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label_dict_subset.get(token_id, -100) for token_id in example["input_ids"] |
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] |
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counter_labels = Counter(labels) |
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example["labels_counts"] = [counter_labels.get(0, 0), counter_labels.get(1, 0)] |
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return example |
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subset_data = subset_data.map(count_targets, num_proc=num_proc) |
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label0_counts = sum([counts[0] for counts in subset_data["labels_counts"]]) |
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label1_counts = sum([counts[1] for counts in subset_data["labels_counts"]]) |
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subset_data = subset_data.remove_columns("labels_counts") |
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return label0_counts, label1_counts |
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def filter_data_balanced_genes(subset_data, label_dict_subset, num_proc): |
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def if_contains_subset_label(example): |
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a = list(label_dict_subset.keys()) |
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b = example["input_ids"] |
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return not set(a).isdisjoint(b) |
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logger.info("Filtering data for balanced genes") |
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subset_data_len_orig = len(subset_data) |
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subset_data = subset_data.filter(if_contains_subset_label, num_proc=num_proc) |
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logger.info( |
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f"Filtered {round((1-len(subset_data)/subset_data_len_orig)*100)}%; {len(subset_data)} remain\n" |
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) |
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return subset_data, label_dict_subset |
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def balance_attr_splits( |
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data, |
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attr_to_split, |
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attr_to_balance, |
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eval_size, |
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max_trials, |
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pval_threshold, |
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state_key, |
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nproc, |
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): |
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metadata_df = pd.DataFrame({"split_attr_ids": data[attr_to_split]}) |
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for attr in attr_to_balance: |
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if attr == state_key: |
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metadata_df[attr] = data["label"] |
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else: |
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metadata_df[attr] = data[attr] |
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metadata_df = metadata_df.drop_duplicates() |
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split_attr_ids = list(metadata_df["split_attr_ids"]) |
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assert len(split_attr_ids) == len(set(split_attr_ids)) |
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eval_num = round(len(split_attr_ids) * eval_size) |
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colnames = ( |
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["trial_num", "train_ids", "eval_ids"] |
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+ pu.flatten_list( |
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[ |
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[ |
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f"{attr}_train_mean_or_counts", |
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f"{attr}_eval_mean_or_counts", |
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f"{attr}_pval", |
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] |
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for attr in attr_to_balance |
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] |
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) |
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+ ["mean_pval"] |
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) |
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balance_df = pd.DataFrame(columns=colnames) |
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data_dict = dict() |
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trial_num = 1 |
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for i in range(max_trials): |
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if not all( |
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count > 1 for count in list(Counter(metadata_df[state_key]).values()) |
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): |
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logger.error( |
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f"Cannot balance by {attr_to_split} while retaining at least 1 occurrence of each {state_key} class in both data splits. " |
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) |
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raise |
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eval_base = [] |
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for state in set(metadata_df[state_key]): |
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eval_base += list( |
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metadata_df.loc[ |
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metadata_df[state_key][metadata_df[state_key].eq(state)] |
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.sample(1, random_state=i) |
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.index |
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]["split_attr_ids"] |
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) |
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non_eval_base = [idx for idx in split_attr_ids if idx not in eval_base] |
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random.seed(i) |
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eval_ids = random.sample(non_eval_base, eval_num - len(eval_base)) + eval_base |
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train_ids = [idx for idx in split_attr_ids if idx not in eval_ids] |
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df_vals = [trial_num, train_ids, eval_ids] |
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pvals = [] |
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for attr in attr_to_balance: |
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train_attr = list( |
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metadata_df[metadata_df["split_attr_ids"].isin(train_ids)][attr] |
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) |
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eval_attr = list( |
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metadata_df[metadata_df["split_attr_ids"].isin(eval_ids)][attr] |
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) |
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if attr == state_key: |
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|
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train_attr = [str(item) for item in train_attr] |
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eval_attr = [str(item) for item in eval_attr] |
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if all(isinstance(item, (int, float)) for item in train_attr + eval_attr): |
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train_attr_mean = np.nanmean(train_attr) |
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eval_attr_mean = np.nanmean(eval_attr) |
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pval = ranksums(train_attr, eval_attr, nan_policy="omit").pvalue |
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df_vals += [train_attr_mean, eval_attr_mean, pval] |
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elif all(isinstance(item, (str)) for item in train_attr + eval_attr): |
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obs_counts = Counter(train_attr) |
|
exp_counts = Counter(eval_attr) |
|
all_categ = set(obs_counts.keys()).union(set(exp_counts.keys())) |
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obs = [obs_counts[cat] for cat in all_categ] |
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exp = [ |
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exp_counts[cat] * sum(obs) / sum(exp_counts.values()) |
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for cat in all_categ |
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] |
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pval = chisquare(f_obs=obs, f_exp=exp).pvalue |
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train_attr_counts = str(obs_counts).strip("Counter(").strip(")") |
|
eval_attr_counts = str(exp_counts).strip("Counter(").strip(")") |
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df_vals += [train_attr_counts, eval_attr_counts, pval] |
|
else: |
|
logger.error( |
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f"Inconsistent data types in attribute {attr}. " |
|
"Cannot infer if continuous or categorical. " |
|
"Must be all numeric (continuous) or all strings (categorical) to balance." |
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) |
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raise |
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pvals += [pval] |
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|
|
df_vals += [np.nanmean(pvals)] |
|
balance_df_i = pd.DataFrame(df_vals, index=colnames).T |
|
balance_df = pd.concat([balance_df, balance_df_i], ignore_index=True) |
|
valid_pvals = [ |
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pval_i |
|
for pval_i in pvals |
|
if isinstance(pval_i, (int, float)) and not np.isnan(pval_i) |
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] |
|
if all(i >= pval_threshold for i in valid_pvals): |
|
data_dict["train"] = pu.filter_by_dict( |
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data, {attr_to_split: balance_df_i["train_ids"][0]}, nproc |
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) |
|
data_dict["test"] = pu.filter_by_dict( |
|
data, {attr_to_split: balance_df_i["eval_ids"][0]}, nproc |
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) |
|
return data_dict, balance_df |
|
trial_num = trial_num + 1 |
|
balance_max_df = balance_df.iloc[balance_df["mean_pval"].idxmax(), :] |
|
data_dict["train"] = pu.filter_by_dict( |
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data, {attr_to_split: balance_df_i["train_ids"][0]}, nproc |
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) |
|
data_dict["test"] = pu.filter_by_dict( |
|
data, {attr_to_split: balance_df_i["eval_ids"][0]}, nproc |
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) |
|
logger.warning( |
|
f"No splits found without significant difference in attr_to_balance among {max_trials} trials. " |
|
f"Selecting optimal split (trial #{balance_max_df['trial_num']}) from completed trials." |
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) |
|
return data_dict, balance_df |
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|
|
|
|
def get_num_classes(id_class_dict): |
|
return len(set(id_class_dict.values())) |
|
|
|
|
|
def compute_metrics(pred): |
|
labels = pred.label_ids |
|
preds = pred.predictions.argmax(-1) |
|
|
|
|
|
if len(labels.shape) == 1: |
|
acc = accuracy_score(labels, preds) |
|
macro_f1 = f1_score(labels, preds, average="macro") |
|
else: |
|
flat_labels = labels.flatten().tolist() |
|
flat_preds = preds.flatten().tolist() |
|
logit_label_paired = [ |
|
item for item in list(zip(flat_preds, flat_labels)) if item[1] != -100 |
|
] |
|
y_pred = [item[0] for item in logit_label_paired] |
|
y_true = [item[1] for item in logit_label_paired] |
|
|
|
acc = accuracy_score(y_true, y_pred) |
|
macro_f1 = f1_score(y_true, y_pred, average="macro") |
|
|
|
return {"accuracy": acc, "macro_f1": macro_f1} |
|
|
|
|
|
def get_default_train_args(model, classifier, data, output_dir): |
|
num_layers = pu.quant_layers(model) |
|
freeze_layers = 0 |
|
batch_size = 12 |
|
if classifier == "cell": |
|
epochs = 10 |
|
evaluation_strategy = "epoch" |
|
load_best_model_at_end = True |
|
else: |
|
epochs = 1 |
|
evaluation_strategy = "no" |
|
load_best_model_at_end = False |
|
|
|
if num_layers == 6: |
|
default_training_args = { |
|
"learning_rate": 5e-5, |
|
"lr_scheduler_type": "linear", |
|
"warmup_steps": 500, |
|
"per_device_train_batch_size": batch_size, |
|
"per_device_eval_batch_size": batch_size, |
|
} |
|
else: |
|
default_training_args = { |
|
"per_device_train_batch_size": batch_size, |
|
"per_device_eval_batch_size": batch_size, |
|
} |
|
|
|
training_args = { |
|
"num_train_epochs": epochs, |
|
"do_train": True, |
|
"do_eval": True, |
|
"evaluation_strategy": evaluation_strategy, |
|
"logging_steps": np.floor(len(data) / batch_size / 8), |
|
"save_strategy": "epoch", |
|
"group_by_length": False, |
|
"length_column_name": "length", |
|
"disable_tqdm": False, |
|
"weight_decay": 0.001, |
|
"load_best_model_at_end": load_best_model_at_end, |
|
} |
|
training_args.update(default_training_args) |
|
|
|
return training_args, freeze_layers |
|
|
|
|
|
def load_best_model(directory, model_type, num_classes, mode="eval"): |
|
file_dict = dict() |
|
for subdir, dirs, files in os.walk(directory): |
|
for file in files: |
|
if file.endswith("result.json"): |
|
with open(f"{subdir}/{file}", "rb") as fp: |
|
result_json = json.load(fp) |
|
file_dict[f"{subdir}"] = result_json["eval_macro_f1"] |
|
file_df = pd.DataFrame( |
|
{"dir": file_dict.keys(), "eval_macro_f1": file_dict.values()} |
|
) |
|
model_superdir = ( |
|
"run-" |
|
+ file_df.iloc[file_df["eval_macro_f1"].idxmax()]["dir"] |
|
.split("_objective_")[2] |
|
.split("_")[0] |
|
) |
|
|
|
for subdir, dirs, files in os.walk(f"{directory}/{model_superdir}"): |
|
for file in files: |
|
if file.endswith("model.safetensors"): |
|
model = pu.load_model(model_type, num_classes, f"{subdir}", mode) |
|
return model |
|
|
|
|
|
class StratifiedKFold3(StratifiedKFold): |
|
def split(self, targets, labels, test_ratio=0.5, groups=None): |
|
s = super().split(targets, labels, groups) |
|
for train_indxs, test_indxs in s: |
|
if test_ratio == 0: |
|
yield train_indxs, test_indxs, None |
|
else: |
|
labels_test = np.array(labels)[test_indxs] |
|
valid_indxs, test_indxs = train_test_split( |
|
test_indxs, |
|
stratify=labels_test, |
|
test_size=test_ratio, |
|
random_state=0, |
|
) |
|
yield train_indxs, valid_indxs, test_indxs |
|
|