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{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Baseline human labels for ours vs. other methods, with 3-per-row voting."
]
},
{
"cell_type": "code",
"execution_count": 1,
"metadata": {},
"outputs": [],
"source": [
"import csv\n",
"import numpy as np\n",
"import matplotlib.pyplot as plt\n",
"from scipy import stats\n",
"from collections import defaultdict\n",
"\n",
"MAX_FILES=2"
]
},
{
"cell_type": "code",
"execution_count": 2,
"metadata": {},
"outputs": [],
"source": [
"def get_data(filename):\n",
" csvfile = open(filename)\n",
" reader = csv.reader(csvfile)\n",
"\n",
" data = []\n",
" for i, row in enumerate(reader):\n",
" if i == 0:\n",
" headers = row\n",
" else:\n",
" data.append(row)\n",
" csvfile.close()\n",
" return headers, data"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Get stats\n",
"\n",
"Run these cells in order to:\n",
"* get stats for ontopicness and fluency to copy/paste\n",
"* save percents for each topic for plotting"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## topics"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {
"scrolled": true
},
"outputs": [],
"source": [
"# for topics\n",
"def decode(st):\n",
" ints = [int(s) for s in st.split('_')]\n",
" # Version 2\n",
" ii, j1, j2 = ints[0], np.mod(ints[1], MAX_FILES), np.mod(ints[2], MAX_FILES)\n",
" return ii, j1, j2\n",
"\n",
"# p-value of two binomial distributions\n",
"# one sided tail\n",
"def two_samp(x1, x2, n1, n2):\n",
" p1 = x1/n1\n",
" p2 = x2/n2\n",
" phat = (x1 + x2) / (n1 + n2)\n",
" z = (p1 - p2) / np.sqrt(phat * (1-phat) * (1/n1 + 1/n2))\n",
" return stats.norm.sf(np.abs(z))\n",
"\n",
"def print_info_t(scores, counts, single_pvalue=True):\n",
" pvalues = np.zeros((MAX_FILES, MAX_FILES))\n",
" for i in range(MAX_FILES):\n",
" for j in range(i, MAX_FILES):\n",
" dist_i = [1] * scores[i] + [0] * (counts[i] - scores[i])\n",
" dist_j = [1] * scores[j] + [0] * (counts[j] - scores[j])\n",
" pvalue = two_samp(scores[i], scores[j], counts[i], counts[j])\n",
" pvalues[i, j] = pvalue\n",
" pvalues[j, i] = pvalue\n",
" percs = scores / counts\n",
"\n",
" print('total counts, on topic counts, percentages:')\n",
" for i in range(MAX_FILES):\n",
" if i == 0 and single_pvalue and MAX_FILES == 2:\n",
" print('{},{},{},{}'.format(counts[i], scores[i], percs[i], pvalues[0][1]))\n",
" else:\n",
" print('{},{},{}'.format(counts[i], scores[i], percs[i]))\n",
"\n",
" if not (single_pvalue and MAX_FILES == 2):\n",
" for row in pvalues:\n",
" print('{},{}'.format(row[0],row[1]))\n",
"\n",
"def get_counts_indices(data, order_index, label_indices):\n",
" scores = np.zeros(MAX_FILES, dtype=int)\n",
" counts = np.zeros(MAX_FILES, dtype=int)\n",
" skipped = 0\n",
" for rownum, row in enumerate(data):\n",
" order = row[order_index]\n",
" for label_index in label_indices:\n",
" label = row[label_index].lower()\n",
" if len(order) > 0 and len(label) > 0:\n",
" a_cat, b_cat = decode(order)[1:]\n",
" # print(label, order, a_cat, b_cat)\n",
" if label == 'a' or label == 'both':\n",
" scores[a_cat] += 1\n",
" if label == 'b' or label == 'both':\n",
" scores[b_cat] += 1\n",
" counts[a_cat] += 1\n",
" counts[b_cat] += 1\n",
" if label not in ['a', 'b', 'both', 'neither']:\n",
" print('******invalid label: {}'.format(label))\n",
" else:\n",
" #print('empty label; skipping', rownum)\n",
" skipped += 1\n",
" print('skipped {}'.format(skipped))\n",
" print_info_t(scores, counts)\n",
" return scores, counts\n",
"\n",
"# vote by row. each row contributes to one count (and 0 or 1 score based on majority vote)\n",
"def get_counts_vote_row(data, order_index, label_indices):\n",
" scores = np.zeros(MAX_FILES, dtype=int)\n",
" counts = np.zeros(MAX_FILES, dtype=int)\n",
" skipped = 0\n",
" for rownum, row in enumerate(data):\n",
" order = row[order_index]\n",
" if len(order) == 0:\n",
" skipped += 1\n",
" else:\n",
" a_cat, b_cat = decode(order)[1:]\n",
" row_score_a, row_score_b, row_counts = 0, 0, 0\n",
" for label_index in label_indices:\n",
" label = row[label_index].lower()\n",
" if len(label) > 0:\n",
" if label == 'a' or label == 'both':\n",
" row_score_a += 1\n",
" if label == 'b' or label == 'both':\n",
" row_score_b += 1\n",
" row_counts += 1\n",
" if label not in ['a', 'b', 'both', 'neither']:\n",
" print('******invalid label: {}'.format(label))\n",
" else:\n",
" print('empty label for nonempty prompt', rownum)\n",
" # update big points\n",
" if row_counts == 3:\n",
" scores[a_cat] += row_score_a // 2\n",
" scores[b_cat] += row_score_b // 2\n",
" counts[a_cat] += 1\n",
" counts[b_cat] += 1\n",
" else:\n",
" print('incomplete row...')\n",
" print('skipped {}'.format(skipped))\n",
" print_info_t(scores, counts)\n",
" return scores, counts"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## fluency"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {
"scrolled": true
},
"outputs": [],
"source": [
"def print_info_f_lists(scorelist, single_pvalue=True):\n",
" for i in range(MAX_FILES):\n",
" if len(scorelist[i]) == 0:\n",
" print('skipping; no data')\n",
" return\n",
"\n",
" pvalues = np.zeros((MAX_FILES, MAX_FILES))\n",
" for i in range(MAX_FILES):\n",
" for j in range(i, MAX_FILES):\n",
" pvalue = stats.ttest_ind(scorelist[i], scorelist[j]).pvalue\n",
" pvalues[i, j] = pvalue\n",
" pvalues[j, i] = pvalue\n",
"\n",
" print('mean, stdev, min, max, counts:')\n",
" for i in range(MAX_FILES):\n",
" if i == 0 and single_pvalue and len(scorelist) == 2:\n",
" print('{},{},{},{},{},{}'.format(np.mean(scorelist[i]), np.std(scorelist[i]),\n",
" np.min(scorelist[i]), np.max(scorelist[i]), len(scorelist[i]), pvalues[0][1]))\n",
" else:\n",
" print('{},{},{},{},{}'.format(np.mean(scorelist[i]), np.std(scorelist[i]),\n",
" np.min(scorelist[i]), np.max(scorelist[i]), len(scorelist[i])))\n",
" if not (single_pvalue and len(scorelist) == 2):\n",
" print('p-values')\n",
" for row in pvalues:\n",
" print('{},{}'.format(row[0],row[1]))\n",
"\n",
"def get_fluencies_indices(data, order_index, label_indices):\n",
" scorelist = [[], []]\n",
" skipped = 0\n",
" for r, row in enumerate(data):\n",
" order = row[order_index]\n",
" if len(order) == 0:\n",
" continue\n",
" for label_ind_pair in label_indices:\n",
" #a_cat, b_cat = decode(order)[1:]\n",
" cats = decode(order)[1:]\n",
" for i, ind in enumerate(label_ind_pair):\n",
" label = row[ind]\n",
" if len(label) > 0:\n",
" scorelist[cats[i]].append(int(label))\n",
" else:\n",
" skipped += 1\n",
" print('skipped {}'.format(skipped))\n",
" print_info_f_lists(scorelist)\n",
" return scorelist"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Run on all files"
]
},
{
"cell_type": "code",
"execution_count": 7,
"metadata": {},
"outputs": [],
"source": [
"# aggregated human labeled everything\n",
"dirname = 'ctrl_wd_openai_csvs/'\n",
"# comment out any of the below if you don't want to include them in \"all\"\n",
"file_info = [\n",
" 'ctrl_legal.csv',\n",
" 'ctrl_politics.csv',\n",
" 'ctrl_religion.csv',\n",
" 'ctrl_science.csv',\n",
" 'ctrl_technologies.csv',\n",
" 'ctrl_positive.csv',\n",
" 'ctrl_negative.csv',\n",
" 'openai_positive.csv',\n",
" 'greedy_legal.csv',\n",
" 'greedy_military.csv',\n",
" 'greedy_politics.csv',\n",
" 'greedy_religion.csv',\n",
" 'greedy_science.csv',\n",
" 'greedy_space.csv',\n",
" 'greedy_technologies.csv',\n",
" 'greedy_positive.csv',\n",
" 'greedy_negative.csv',\n",
"]"
]
},
{
"cell_type": "code",
"execution_count": 9,
"metadata": {
"scrolled": false
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"ctrl_legal.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"20,7,0.35,0.24507648020791256\n",
"20,5,0.25\n",
"\n",
"ctrl_politics.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"20,7,0.35,0.16864350736717681\n",
"20,10,0.5\n",
"\n",
"ctrl_religion.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"20,12,0.6,0.000782701129001274\n",
"20,20,1.0\n",
"\n",
"ctrl_science.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"20,15,0.75,0.012580379600204389\n",
"20,8,0.4\n",
"\n",
"ctrl_technologies.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"20,15,0.75,0.005502076588434386\n",
"20,7,0.35\n",
"\n",
"ctrl_positive.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"15,13,0.8666666666666667,0.312103057383203\n",
"15,12,0.8\n",
"\n",
"ctrl_negative.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"15,8,0.5333333333333333,0.12785217497142026\n",
"15,11,0.7333333333333333\n",
"\n",
"openai_positive.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"45,38,0.8444444444444444,7.502148606340828e-12\n",
"45,6,0.13333333333333333\n",
"\n",
"greedy_legal.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,26,0.43333333333333335,0.014054020073575932\n",
"60,38,0.6333333333333333\n",
"\n",
"greedy_military.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,21,0.35,0.423683196354148\n",
"60,20,0.3333333333333333\n",
"\n",
"greedy_politics.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,20,0.3333333333333333,0.423683196354148\n",
"60,21,0.35\n",
"\n",
"greedy_religion.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,31,0.5166666666666667,0.004543733726219588\n",
"60,17,0.2833333333333333\n",
"\n",
"greedy_science.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,33,0.55,0.04996165925796605\n",
"60,24,0.4\n",
"\n",
"greedy_space.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,34,0.5666666666666667,2.9438821372586324e-08\n",
"60,6,0.1\n",
"\n",
"greedy_technologies.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"60,36,0.6,0.014229868458155282\n",
"60,24,0.4\n",
"\n",
"greedy_positive.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"45,37,0.8222222222222222,6.07065790526639e-09\n",
"45,10,0.2222222222222222\n",
"\n",
"greedy_negative.csv\n",
"skipped 0\n",
"total counts, on topic counts, percentages:\n",
"45,18,0.4,0.0048164878862943334\n",
"45,7,0.15555555555555556\n",
"\n",
"all:\n",
"total counts, on topic counts, percentages:\n",
"685,371,0.5416058394160584,5.6920836882984375e-12\n",
"685,246,0.35912408759124087\n",
"\n",
"------------\n",
"\n",
"ctrl_legal.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.35,0.6538348415311009,2,5,60,0.21268659490448816\n",
"3.183333333333333,0.7851043808875918,2,5,60\n",
"\n",
"ctrl_politics.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.6333333333333333,0.682316316348624,2,5,60,0.5620319695586566\n",
"3.7,0.5567764362830021,2,5,60\n",
"\n",
"ctrl_religion.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.5833333333333335,0.7369230323144715,2,5,60,0.025496401986981814\n",
"3.8666666666666667,0.6182412330330469,2,5,60\n",
"\n",
"ctrl_science.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.9166666666666665,0.7139483330201298,2,5,60,0.11926537531844811\n",
"3.7333333333333334,0.5436502143433364,3,5,60\n",
"\n",
"ctrl_technologies.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.566666666666667,0.8239471396205517,2,5,60,0.41405751072305697\n",
"3.683333333333333,0.7186020379103366,1,5,60\n",
"\n",
"ctrl_positive.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.7777777777777777,0.5921294486432991,2,5,45,0.2770324945551848\n",
"3.911111111111111,0.5506449641495051,3,5,45\n",
"\n",
"ctrl_negative.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"2.933333333333333,0.7999999999999999,1,4,45,0.15456038547144507\n",
"3.1777777777777776,0.7969076034240491,1,4,45\n",
"\n",
"openai_positive.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.6814814814814816,0.83134742794656,2,5,135,0.00044715078341087973\n",
"3.3185185185185184,0.8402103074636584,1,5,135\n",
"\n",
"greedy_legal.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.861111111111111,0.6033599339337534,2,5,180,2.0680624898872873e-09\n",
"3.3722222222222222,0.8757888859990781,1,5,180\n",
"\n",
"greedy_military.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.988888888888889,0.7148340047318592,1,5,180,2.9929380752302575e-05\n",
"3.6222222222222222,0.9138171197756484,1,5,180\n",
"\n",
"greedy_politics.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.8222222222222224,0.684393937530422,2,5,180,0.0007209758186600587\n",
"3.522222222222222,0.957169180190301,1,5,180\n",
"\n",
"greedy_religion.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.8333333333333335,0.8975274678557507,1,5,180,4.066885786996924e-09\n",
"3.2111111111111112,1.0487499908032782,1,5,180\n",
"\n",
"greedy_science.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.8777777777777778,0.5836242660741733,2,5,180,0.0006552437647639663\n",
"3.6166666666666667,0.8318319808978519,1,5,180\n",
"\n",
"greedy_space.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.716666666666667,0.8251262529657709,1,5,180,0.0954991700009854\n",
"3.577777777777778,0.7450246495217872,1,5,180\n",
"\n",
"greedy_technologies.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"4.011111111111111,0.5476098457934048,2,5,180,6.183501355237109e-11\n",
"3.4555555555555557,0.9563949801335698,1,5,180\n",
"\n",
"greedy_positive.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.740740740740741,0.7299209796192601,1,5,135,0.7085851710838819\n",
"3.7777777777777777,0.8833158628600795,1,5,135\n",
"\n",
"greedy_negative.csv\n",
"skipped 0\n",
"mean, stdev, min, max, counts:\n",
"3.762962962962963,0.5863560719159496,2,5,135,0.02527504830979518\n",
"3.5555555555555554,0.8916623398995057,1,5,135\n",
"\n",
"all:\n",
"mean, stdev, min, max, counts:\n",
"3.78345498783455,0.735818880968324,1,5,2055,6.013335996010963e-25\n",
"3.5206812652068127,0.8798559510028829,1,5,2055\n",
"total counts\n",
"2055\n",
"2055\n"
]
},
{
"name": "stderr",
"output_type": "stream",
"text": [
"/Users/rosanne/anaconda3/envs/py36/lib/python3.6/site-packages/ipykernel_launcher.py:14: RuntimeWarning: invalid value encountered in double_scalars\n",
" \n"
]
}
],
"source": [
"# hardcoded indices\n",
"category_index = -1 # index of encoded seed and methods\n",
"topic_indices = [2, 6, 10]\n",
"fluency_indices = [(3,4), (7,8), (11,12)]\n",
"\n",
"all_scores = np.zeros(MAX_FILES, dtype=int)\n",
"all_counts = np.zeros(MAX_FILES, dtype=int)\n",
"percs_ordered = np.zeros((len(file_info), MAX_FILES)) # percents saved in same order as file names\n",
"for i, fname in enumerate(file_info):\n",
" filename = dirname + fname\n",
" headers, data = get_data(filename)\n",
" print(fname)\n",
" scores, counts = get_counts_vote_row(data, category_index, topic_indices)\n",
" all_scores += scores\n",
" all_counts += counts\n",
" percs_ordered[i] = 100 * scores / counts\n",
" print()\n",
"print('all:')\n",
"print_info_t(all_scores, all_counts)\n",
"print('\\n------------\\n')\n",
"\n",
"# uber labeled fluencies\n",
"all_fluencies = [[], []]\n",
"for fname in file_info:\n",
" filename = dirname + fname\n",
" headers, data = get_data(filename)\n",
" print(fname)\n",
" new_scores = get_fluencies_indices(data, category_index, fluency_indices)\n",
" for i in range(len(all_fluencies)):\n",
" all_fluencies[i].extend(new_scores[i])\n",
" print()\n",
"print('all:')\n",
"print_info_f_lists(all_fluencies)\n",
"print('total counts')\n",
"\n",
"for x in all_fluencies:\n",
" print(len(x))\n",
" \n",
"all_scores_hist = all_fluencies"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
}
],
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"display_name": "Python 3",
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"name": "python3"
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|