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sequence_id
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events
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train_0000
[ { "t": 0, "x": -87.64205932617188, "y": 41.88173294067383 }, { "t": 0, "x": -87.77013397216797, "y": 41.77809524536133 }, { "t": 0, "x": -87.71907043457031, "y": 41.900474548339844 }, { "t": 0, "x": -87.61949920654297, "y": 41.700687408447266 }, { ...
train_0001
[ { "t": 0, "x": -87.68627166748047, "y": 41.89382553100586 }, { "t": 0, "x": -87.6141357421875, "y": 41.71592330932617 }, { "t": 0, "x": -87.693603515625, "y": 41.914955139160156 }, { "t": 0, "x": -87.65308380126953, "y": 41.679908752441406 }, { "t"...
train_0002
[ { "t": 0, "x": -87.63536071777344, "y": 41.69489288330078 }, { "t": 0, "x": -87.73660278320312, "y": 41.960960388183594 }, { "t": 0, "x": -87.75882720947266, "y": 41.87944030761719 }, { "t": 0, "x": -87.61042022705078, "y": 41.72377014160156 }, { "...
train_0003
[ { "t": 0, "x": -87.65350341796875, "y": 41.940025329589844 }, { "t": 0.0009259264916181564, "x": -87.61581420898438, "y": 41.89198303222656 }, { "t": 0.0009259264916181564, "x": -87.67694091796875, "y": 41.80709457397461 }, { "t": 0.0009259264916181564, "x": -...
train_0004
[ { "t": 0, "x": -87.65497589111328, "y": 41.94549560546875 }, { "t": 0.002291664481163025, "x": -87.6690673828125, "y": 42.01591873168945 }, { "t": 0.00277777761220932, "x": -87.65483856201172, "y": 41.975337982177734 }, { "t": 0.00277777761220932, "x": -87.695...
train_0005
[ { "t": 0, "x": -87.59986114501953, "y": 41.77436447143555 }, { "t": 0, "x": -87.66584014892578, "y": 41.775699615478516 }, { "t": 0, "x": -87.70350646972656, "y": 41.9613037109375 }, { "t": 0, "x": -87.7611312866211, "y": 41.92415237426758 }, { "t"...
train_0006
[ { "t": 0, "x": -87.67452239990234, "y": 42.00245666503906 }, { "t": 0, "x": -87.60038757324219, "y": 41.7595100402832 }, { "t": 0, "x": -87.78275299072266, "y": 41.92012405395508 }, { "t": 0, "x": -87.72205352783203, "y": 41.87791061401367 }, { "t"...
train_0007
[ { "t": 0, "x": -87.62838745117188, "y": 41.89815902709961 }, { "t": 0, "x": -87.704345703125, "y": 41.857357025146484 }, { "t": 0, "x": -87.64266204833984, "y": 41.750343322753906 }, { "t": 0, "x": -87.694580078125, "y": 41.87096405029297 }, { "t":...
train_0008
[ { "t": 0, "x": -87.77393341064453, "y": 41.9719123840332 }, { "t": 0, "x": -87.75444030761719, "y": 41.90940856933594 }, { "t": 0, "x": -87.75081634521484, "y": 41.90513229370117 }, { "t": 0, "x": -87.73163604736328, "y": 41.91826629638672 }, { "t"...
train_0009
[ { "t": 0, "x": -87.71915435791016, "y": 41.745994567871094 }, { "t": 0.002083331346511841, "x": -87.66249084472656, "y": 41.766090393066406 }, { "t": 0.006944447755813599, "x": -87.76445007324219, "y": 41.78140640258789 }, { "t": 0.010416656732559204, "x": -87...
train_0010
[ { "t": 0, "x": -87.90531158447266, "y": 41.976200103759766 }, { "t": 0, "x": -87.6909408569336, "y": 41.81698989868164 }, { "t": 0, "x": -87.74957275390625, "y": 41.916324615478516 }, { "t": 0, "x": -87.59339904785156, "y": 41.721134185791016 }, { ...
train_0011
[ { "t": 0, "x": -87.66730499267578, "y": 41.91742706298828 }, { "t": 0, "x": -87.71674346923828, "y": 41.86707305908203 }, { "t": 0.0034722089767456055, "x": -87.6290512084961, "y": 41.84142303466797 }, { "t": 0.0034722089767456055, "x": -87.66033172607422, ...
train_0012
[ { "t": 0, "x": -87.60783386230469, "y": 41.70820617675781 }, { "t": 0, "x": -87.90531158447266, "y": 41.976200103759766 }, { "t": 0, "x": -87.6670913696289, "y": 41.71339797973633 }, { "t": 0, "x": -87.63346099853516, "y": 41.87351608276367 }, { "t...
train_0013
[ { "t": 0, "x": -87.7047348022461, "y": 41.961299896240234 }, { "t": 0.002951383590698242, "x": -87.62704467773438, "y": 41.847434997558594 }, { "t": 0.002951383590698242, "x": -87.72109985351562, "y": 41.810916900634766 }, { "t": 0.002951383590698242, "x": -87...
train_0014
[ { "t": 0, "x": -87.6488037109375, "y": 41.78868103027344 }, { "t": 0, "x": -87.70127868652344, "y": 41.87823486328125 }, { "t": 0.003472268581390381, "x": -87.68799591064453, "y": 41.93043899536133 }, { "t": 0.003472268581390381, "x": -87.6194839477539, "y...
train_0015
[ { "t": 0, "x": -87.66731262207031, "y": 41.75362777709961 }, { "t": 0, "x": -87.70906066894531, "y": 41.9527473449707 }, { "t": 0, "x": -87.62859344482422, "y": 41.680381774902344 }, { "t": 0, "x": -87.71299743652344, "y": 41.96543502807617 }, { "t...
train_0016
[ { "t": 0, "x": -87.65644073486328, "y": 41.979915618896484 }, { "t": 0.0002315044403076172, "x": -87.64761352539062, "y": 41.78935241699219 }, { "t": 0.0019097328186035156, "x": -87.6058349609375, "y": 41.69190979003906 }, { "t": 0.0034722089767456055, "x": -8...
train_0017
[ { "t": 0, "x": -87.65442657470703, "y": 41.86692428588867 }, { "t": 0.013888835906982422, "x": -87.73097229003906, "y": 41.8991584777832 }, { "t": 0.013888835906982422, "x": -87.68693542480469, "y": 41.89397048950195 }, { "t": 0.013888835906982422, "x": -87.66...
train_0018
[ { "t": 0, "x": -87.7236557006836, "y": 41.890602111816406 }, { "t": 0.010416746139526367, "x": -87.64068603515625, "y": 41.94340133666992 }, { "t": 0.010416746139526367, "x": -87.72252655029297, "y": 41.870643615722656 }, { "t": 0.012812495231628418, "x": -87....
train_0019
[ { "t": 0, "x": -87.90531158447266, "y": 41.976200103759766 }, { "t": 0, "x": -87.70840454101562, "y": 41.97109603881836 }, { "t": 0, "x": -87.67935943603516, "y": 41.88116455078125 }, { "t": 0, "x": -87.74858856201172, "y": 41.7781982421875 }, { "t...
train_0020
[ { "t": 0, "x": -87.79393005371094, "y": 41.91594696044922 }, { "t": 0, "x": -87.57713317871094, "y": 41.76594924926758 }, { "t": 0, "x": -87.6750717163086, "y": 41.81022262573242 }, { "t": 0, "x": -87.63988494873047, "y": 41.841880798339844 }, { "t...
train_0021
[ { "t": 0, "x": -87.65690612792969, "y": 41.98561096191406 }, { "t": 0, "x": -87.64778137207031, "y": 41.95405578613281 }, { "t": 0, "x": -87.61560821533203, "y": 41.88475036621094 }, { "t": 0.0008449554443359375, "x": -87.75237274169922, "y": 41.8941078186...
train_0022
[ { "t": 0, "x": -87.68464660644531, "y": 41.929847717285156 }, { "t": 0, "x": -87.67326354980469, "y": 41.92787170410156 }, { "t": 0, "x": -87.75074768066406, "y": 41.9033203125 }, { "t": 0, "x": -87.79267883300781, "y": 41.79324722290039 }, { "t": ...
train_0023
[ { "t": 0, "x": -87.67752075195312, "y": 41.923831939697266 }, { "t": 0, "x": -87.72019958496094, "y": 41.906593322753906 }, { "t": 0, "x": -87.65946960449219, "y": 41.82773208618164 }, { "t": 0, "x": -87.62371826171875, "y": 41.71431350708008 }, { ...
train_0024
[ { "t": 0, "x": -87.76666259765625, "y": 41.947364807128906 }, { "t": 0, "x": -87.77427673339844, "y": 41.96027755737305 }, { "t": 0, "x": -87.66963958740234, "y": 41.79572296142578 }, { "t": 0, "x": -87.77413177490234, "y": 41.87034606933594 }, { "...
train_0025
[ { "t": 0, "x": -87.75175476074219, "y": 41.91057586669922 }, { "t": 0, "x": -87.77759552001953, "y": 41.91182327270508 }, { "t": 0, "x": -87.72106170654297, "y": 41.90282440185547 }, { "t": 0, "x": -87.61792755126953, "y": 41.7365608215332 }, { "t"...
train_0026
[ { "t": 0, "x": -87.55899810791016, "y": 41.74560546875 }, { "t": 0, "x": -87.71113586425781, "y": 41.959232330322266 }, { "t": 0, "x": -87.70476531982422, "y": 41.971858978271484 }, { "t": 0, "x": -87.6374282836914, "y": 41.77048873901367 }, { "t":...
train_0027
[ { "t": 0, "x": -87.70772552490234, "y": 41.937564849853516 }, { "t": 0, "x": -87.69692993164062, "y": 41.76436233520508 }, { "t": 0, "x": -87.69820404052734, "y": 41.782142639160156 }, { "t": 0, "x": -87.65162658691406, "y": 41.75703430175781 }, { ...
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Chicago Crime STPP Benchmark Dataset

A benchmark-ready Spatio-Temporal Point Process (STPP) dataset derived from Chicago Crime Data (~8 Million records), following the standard split semantics for Neural STPP evaluation.

Dataset Description

Each record represents a sequence of events. The dataset covers historical crime incidents, partitioned sequentially into train / val / test subsets (70% / 15% / 15% ratio).

Source Format

Raw data was obtained from the Chicago Data Portal. Each sequence maps to a (N, 3) float64 array with columns [t, x, y].

Sequence Unit

One sequence corresponds to a chunk of contiguous events. No new windowing or segmentation was applied. The dataset unit aligns with benchmark STPP formulations.

Event Schema

Field Type Description
t float Time of event
x float Longitude or X coordinate
y float Latitude or Y coordinate

Values are exported as-is — no normalization applied. The Neural STPP codebase applies StdScaler normalization at training time, not during preprocessing.

Split Semantics

Split Sequences Events Ratio
train 59,407 5,940,645 70%
val 12,684 1,268,391 15%
test 12,634 1,263,314 15%

Split logic mirrors a sequential temporal split sequential_split_ratio_(0.7, 0.15, 0.15) — no random splitting, no reshuffling.

File Structure

chicago_crime/
├── train.jsonl        # 59407 sequences
├── val.jsonl          # 12684 sequences
├── test.jsonl         # 12634 sequences
├── splits.json        # {"train": [...], "val": [...], "test": [...]}
├── dataset_meta.json  # Task/schema metadata
└── README.md

JSONL Row Schema

Each line in a .jsonl file is a JSON object:

{
  "sequence_id": "seq_0",
  "events": [
    {"t": 1.062, "x": -87.629, "y": 41.878},
    {"t": 2.318, "x": -87.630, "y": 41.879}
  ]
}

Example (Python)

import json

with open("train.jsonl") as f:
    for line in f:
        seq = json.loads(line)
        sid    = seq["sequence_id"]
        events = seq["events"]        # list of {"t", "x", "y"} dicts
        t = [e["t"] for e in events]
        x = [e["x"] for e in events]
        y = [e["y"] for e in events]

Source & License

Source data: Chicago Data Portal URL: https://data.cityofchicago.org/api/views/ijzp-q8t2/rows.csv?accessType=DOWNLOAD

Version 1.0.0 Time Ordering Fix

Version 1.0.0 applies a deterministic data-level repair: events are stable-sorted by t globally before chunking. Validation ensures non-decreasing timestamps for every sequence in train/val/test.

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