Dataset Viewer
Auto-converted to Parquet Duplicate
sequence_id
stringlengths
10
10
events
listlengths
25
100
train_0000
[ { "t": 0, "x": -118.50330352783203, "y": 34.16600036621094 }, { "t": 0, "x": -118.3333969116211, "y": 34.048500061035156 }, { "t": 0, "x": -118.4531021118164, "y": 34.2151985168457 }, { "t": 0, "x": -118.28790283203125, "y": 33.73830032348633 }, { ...
train_0001
[ { "t": 0, "x": -118.3927993774414, "y": 34.14419937133789 }, { "t": 0, "x": -118.43910217285156, "y": 33.9906005859375 }, { "t": 0, "x": -118.2782974243164, "y": 33.97079849243164 }, { "t": 0, "x": -118.26390075683594, "y": 33.79970169067383 }, { "...
train_0002
[ { "t": 0, "x": -118.53479766845703, "y": 34.182498931884766 }, { "t": 0, "x": -118.25460052490234, "y": 34.01969909667969 }, { "t": 0, "x": -118.2761001586914, "y": 33.95790100097656 }, { "t": 0, "x": -118.30039978027344, "y": 34.061798095703125 }, { ...
train_0003
[ { "t": 0, "x": -118.3104019165039, "y": 34.069000244140625 }, { "t": 0, "x": -118.26950073242188, "y": 33.92919921875 }, { "t": 0, "x": -118.46440124511719, "y": 34.22999954223633 }, { "t": 0, "x": -118.26110076904297, "y": 33.93980026245117 }, { "...
train_0004
[ { "t": 0, "x": -118.51840209960938, "y": 34.1693000793457 }, { "t": 0, "x": -118.47550201416016, "y": 34.31719970703125 }, { "t": 0, "x": -118.23290252685547, "y": 34.0713996887207 }, { "t": 0, "x": -118.2876968383789, "y": 33.963600158691406 }, { ...
train_0005
[ { "t": 0, "x": -118.41539764404297, "y": 34.307098388671875 }, { "t": 0, "x": -118.47019958496094, "y": 34.242698669433594 }, { "t": 0, "x": -118.57749938964844, "y": 34.20009994506836 }, { "t": 0, "x": -118.31330108642578, "y": 34.0281982421875 }, { ...
train_0006
[ { "t": 0, "x": -118.24150085449219, "y": 34.05609893798828 }, { "t": 0, "x": -118.28559875488281, "y": 33.99140167236328 }, { "t": 0, "x": -118.34249877929688, "y": 34.0369987487793 }, { "t": 0, "x": -118.43000030517578, "y": 34.064701080322266 }, { ...
train_0007
[ { "t": 0, "x": -118.25350189208984, "y": 34.010398864746094 }, { "t": 0, "x": -118.23909759521484, "y": 33.94459915161133 }, { "t": 0, "x": -118.26969909667969, "y": 34.02330017089844 }, { "t": 0, "x": -118.34619903564453, "y": 34.069000244140625 }, { ...
train_0008
[ { "t": 0, "x": -118.46990203857422, "y": 34.05270004272461 }, { "t": 0.003472268581390381, "x": -118.60150146484375, "y": 34.187801361083984 }, { "t": 0.003472268581390381, "x": -118.41190338134766, "y": 34.19240188598633 }, { "t": 0.003472268581390381, "x": -...
train_0009
[ { "t": 0, "x": -118.28379821777344, "y": 34.00170135498047 }, { "t": 0, "x": -118.32949829101562, "y": 34.09980010986328 }, { "t": 0.006944477558135986, "x": -118.2416000366211, "y": 34.1150016784668 }, { "t": 0.006944477558135986, "x": -118.1947021484375, ...
train_0010
[ { "t": 0, "x": -118.33319854736328, "y": 34.097999572753906 }, { "t": 0.0034722089767456055, "x": -118.35220336914062, "y": 34.08359909057617 }, { "t": 0.0034722089767456055, "x": -118.4552993774414, "y": 34.224700927734375 }, { "t": 0.006944417953491211, "x":...
train_0011
[ { "t": 0, "x": -118.40370178222656, "y": 34.231998443603516 }, { "t": 0.0006943941116333008, "x": -118.47679901123047, "y": 34.047298431396484 }, { "t": 0.006944417953491211, "x": -118.25409698486328, "y": 33.785099029541016 }, { "t": 0.006944417953491211, "x"...
train_0012
[ { "t": 0, "x": -118.46749877929688, "y": 34.244598388671875 }, { "t": 0, "x": -118.53610229492188, "y": 34.23080062866211 }, { "t": 0.013888835906982422, "x": -118.24340057373047, "y": 34.05220031738281 }, { "t": 0.013888835906982422, "x": -118.46620178222656,...
train_0013
[ { "t": 0, "x": -118.3115005493164, "y": 34.04949951171875 }, { "t": 0.0034722089767456055, "x": -118.3833999633789, "y": 34.17940139770508 }, { "t": 0.006944417953491211, "x": -118.45330047607422, "y": 34.21979904174805 }, { "t": 0.010416746139526367, "x": -11...
train_0014
[ { "t": 0, "x": -118.46739959716797, "y": 34.257301330566406 }, { "t": 0, "x": -118.27290344238281, "y": 34.09859848022461 }, { "t": 0, "x": -118.4220962524414, "y": 34.2661018371582 }, { "t": 0.006944417953491211, "x": -118.2771987915039, "y": 33.930099487...
train_0015
[ { "t": 0, "x": -118.23169708251953, "y": 33.934600830078125 }, { "t": 0, "x": -118.55829620361328, "y": 34.24399948120117 }, { "t": 0, "x": -118.6050033569336, "y": 34.25360107421875 }, { "t": 0, "x": -118.2571029663086, "y": 34.073699951171875 }, { ...
train_0016
[ { "t": 0, "x": -118.46949768066406, "y": 34.32320022583008 }, { "t": 0.0034722089767456055, "x": -118.60590362548828, "y": 34.19049835205078 }, { "t": 0.0034722089767456055, "x": -118.52069854736328, "y": 34.1885986328125 }, { "t": 0.0034722089767456055, "x": ...
train_0017
[ { "t": 0, "x": -118.46620178222656, "y": 34.19850158691406 }, { "t": 0, "x": -118.31770324707031, "y": 34.03799819946289 }, { "t": 0, "x": -118.31839752197266, "y": 34.268699645996094 }, { "t": 0, "x": -118.5197982788086, "y": 34.25579833984375 }, { ...
train_0018
[ { "t": 0, "x": -118.59410095214844, "y": 34.191200256347656 }, { "t": 0, "x": -118.31580352783203, "y": 34.23630142211914 }, { "t": 0, "x": -118.30349731445312, "y": 34.10179901123047 }, { "t": 0.0034723281860351562, "x": -118.30889892578125, "y": 34.00279...
train_0019
[ { "t": 0, "x": -118.46759796142578, "y": 34.188499450683594 }, { "t": 0, "x": -118.26519775390625, "y": 33.93479919433594 }, { "t": 0, "x": -118.60150146484375, "y": 34.184898376464844 }, { "t": 0, "x": -118.19950103759766, "y": 34.01729965209961 }, { ...
train_0020
[ { "t": 0, "x": -118.2771987915039, "y": 33.95600128173828 }, { "t": 0, "x": -118.48390197753906, "y": 34.05149841308594 }, { "t": 0, "x": -118.28130340576172, "y": 33.963199615478516 }, { "t": 0, "x": -118.3904037475586, "y": 34.27539825439453 }, { ...
train_0021
[ { "t": 0, "x": -118.28959655761719, "y": 34.026798248291016 }, { "t": 0.0034723281860351562, "x": -118.30490112304688, "y": 34.103599548339844 }, { "t": 0.0034723281860351562, "x": -118.39640045166016, "y": 34.22330093383789 }, { "t": 0.006944417953491211, "x"...
train_0022
[ { "t": 0, "x": -118.30650329589844, "y": 33.8291015625 }, { "t": 0.004166603088378906, "x": -118.19779968261719, "y": 34.0276985168457 }, { "t": 0.004166603088378906, "x": -118.45249938964844, "y": 34.03409957885742 }, { "t": 0.004166603088378906, "x": -118.19...
train_0023
[ { "t": 0, "x": -118.44210052490234, "y": 34.19390106201172 }, { "t": 0.010416746139526367, "x": -118.63089752197266, "y": 34.162601470947266 }, { "t": 0.010416746139526367, "x": -118.28189849853516, "y": 34.00749969482422 }, { "t": 0.010416746139526367, "x": -...
train_0024
[ { "t": 0, "x": -118.43119812011719, "y": 34.190399169921875 }, { "t": 0, "x": -118.19509887695312, "y": 34.07680130004883 }, { "t": 0, "x": -118.3207015991211, "y": 34.0453987121582 }, { "t": 0, "x": -118.23909759521484, "y": 33.94309997558594 }, { ...
train_0025
[ { "t": 0, "x": -118.63690185546875, "y": 34.18880081176758 }, { "t": 0, "x": -118.41010284423828, "y": 34.20869827270508 }, { "t": 0, "x": -118.58039855957031, "y": 34.16790008544922 }, { "t": 0, "x": -118.30919647216797, "y": 34.07929992675781 }, { ...
train_0026
[ { "t": 0, "x": -118.39869689941406, "y": 34.18669891357422 }, { "t": 0, "x": -118.26509857177734, "y": 33.960201263427734 }, { "t": 0.0034720897674560547, "x": -118.22239685058594, "y": 34.025299072265625 }, { "t": 0.0034720897674560547, "x": -118.207801818847...
train_0027
[ { "t": 0, "x": -118.256103515625, "y": 34.042301177978516 }, { "t": 0, "x": -118.4041976928711, "y": 34.25279998779297 }, { "t": 0, "x": -118.19580078125, "y": 34.11109924316406 }, { "t": 0, "x": -118.31310272216797, "y": 34.25790023803711 }, { "t"...
End of preview. Expand in Data Studio

LA Crime STPP Benchmark Dataset

A benchmark-ready Spatio-Temporal Point Process (STPP) dataset derived from Los Angeles Crime Data (~900k+ 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 LA Open Data. 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 β€” no normalization applied. The Neural STPP codebase applies StdScaler normalization at training time, not during preprocessing.

Split Semantics

Split Sequences Events Ratio
train 7,035 703,425 70%
val 1,508 150,735 15%
test 1,508 150,734 15%

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

File Structure

la_crime/
β”œβ”€β”€ train.jsonl        # 7035 sequences
β”œβ”€β”€ val.jsonl          # 1508 sequences
β”œβ”€β”€ test.jsonl         # 1508 sequences
β”œβ”€β”€ splits.json        # {"train": [...], "val": [...], "test": [...]}
β”œβ”€β”€ 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": -118.243, "y": 34.052},
    {"t": 2.318, "x": -118.244, "y": 34.053}
  ]
}

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: LA Open Data URL: https://data.lacity.org/api/views/2nrs-mtv8/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.

Downloads last month
27