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events
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train_0000
[ { "t": 0, "x": -105.24759674072266, "y": 40.013607025146484 }, { "t": 0.35078704357147217, "x": -105.00639343261719, "y": 39.76875305175781 }, { "t": 0.38511574268341064, "x": -105.00298309326172, "y": 39.76805877685547 }, { "t": 0.403634250164032, "x": -105.0...
train_0001
[ { "t": 0, "x": -105.13086700439453, "y": 39.92995834350586 }, { "t": 0.213714599609375, "x": -104.98754119873047, "y": 39.716453552246094 }, { "t": 0.2151966094970703, "x": -104.98754119873047, "y": 39.716453552246094 }, { "t": 0.6332292556762695, "x": -105.12...
train_0002
[ { "t": 0, "x": -108.55977630615234, "y": 39.09658432006836 }, { "t": 0.00875091552734375, "x": -108.55977630615234, "y": 39.09658432006836 }, { "t": 0.5929298400878906, "x": -108.59488677978516, "y": 39.0622444152832 }, { "t": 0.5941085815429688, "x": -104.988...
train_0003
[ { "t": 0, "x": -117.17017364501953, "y": 32.745426177978516 }, { "t": 0.0024890899658203125, "x": -122.39579010009766, "y": 37.78129959106445 }, { "t": 0.0026035308837890625, "x": -117.1619873046875, "y": 32.71882629394531 }, { "t": 0.002696990966796875, "x": ...
train_0004
[ { "t": 0, "x": -104.98932647705078, "y": 39.75413513183594 }, { "t": 0.002338409423828125, "x": -104.98932647705078, "y": 39.75413513183594 }, { "t": 0.0043163299560546875, "x": -104.98932647705078, "y": 39.75413513183594 }, { "t": 0.012105941772460938, "x": -...
train_0005
[ { "t": 0, "x": -117.16195678710938, "y": 32.71135711669922 }, { "t": 0.0008907318115234375, "x": -118.48250579833984, "y": 34.00095748901367 }, { "t": 0.00311279296875, "x": 18.062639236450195, "y": 59.3294677734375 }, { "t": 0.004756927490234375, "x": -118.15...
train_0006
[ { "t": 0, "x": -117.05606079101562, "y": 32.8177490234375 }, { "t": 0.000232696533203125, "x": -117.05606079101562, "y": 32.8177490234375 }, { "t": 0.012025833129882812, "x": -104.99932861328125, "y": 39.75177764892578 }, { "t": 0.03333282470703125, "x": -122....
train_0007
[ { "t": 0, "x": -105.27848815917969, "y": 40.018211364746094 }, { "t": 0.00244140625, "x": -86.90736389160156, "y": 40.42236328125 }, { "t": 0.00351715087890625, "x": -122.40509033203125, "y": 37.786319732666016 }, { "t": 0.00644683837890625, "x": -122.34668731...
train_0008
[ { "t": 0, "x": -116.96778869628906, "y": 32.80375671386719 }, { "t": 0.00136566162109375, "x": -105.25408172607422, "y": 39.99672317504883 }, { "t": 0.0014934539794921875, "x": -116.96778869628906, "y": 32.80375671386719 }, { "t": 0.0023975372314453125, "x": -...
train_0009
[ { "t": 0, "x": -118.39950561523438, "y": 33.945308685302734 }, { "t": 0.001445770263671875, "x": -118.39950561523438, "y": 33.945308685302734 }, { "t": 0.0035305023193359375, "x": -87.6758804321289, "y": 41.90362548828125 }, { "t": 0.018808364868164062, "x": -...
train_0010
[ { "t": 0, "x": 9.033332824707031, "y": 56.56666564941406 }, { "t": 0.0016422271728515625, "x": -122.67620849609375, "y": 45.52345275878906 }, { "t": 0.0033435821533203125, "x": -118.49905395507812, "y": 34.018165588378906 }, { "t": 0.005786895751953125, "x": 9...
train_0011
[ { "t": 0, "x": -105.15958404541016, "y": 39.73475646972656 }, { "t": 0.002429962158203125, "x": -122.38502502441406, "y": 47.66867446899414 }, { "t": 0.0049304962158203125, "x": -122.38502502441406, "y": 47.66867446899414 }, { "t": 0.0059146881103515625, "x": ...
train_0012
[ { "t": 0, "x": -87.62771606445312, "y": 41.878204345703125 }, { "t": 0.0031833648681640625, "x": -87.62763977050781, "y": 41.87820816040039 }, { "t": 0.022359848022460938, "x": 73.2206802368164, "y": 3.2027781009674072 }, { "t": 0.023738861083984375, "x": -117...
train_0013
[ { "t": 0, "x": -104.97130584716797, "y": 39.73236846923828 }, { "t": 0.00091552734375, "x": -104.97130584716797, "y": 39.73236846923828 }, { "t": 0.008136749267578125, "x": -104.81507873535156, "y": 39.614158630371094 }, { "t": 0.008565902709960938, "x": -122....
train_0014
[ { "t": 0, "x": -79.93254852294922, "y": 40.451576232910156 }, { "t": 0.008310317993164062, "x": -122.3057861328125, "y": 47.79010772705078 }, { "t": 0.008668899536132812, "x": -122.3057861328125, "y": 47.79010772705078 }, { "t": 0.010023117065429688, "x": -117...
train_0015
[ { "t": 0, "x": -119.75126647949219, "y": 37.25022506713867 }, { "t": 0.0003814697265625, "x": -119.75126647949219, "y": 37.25022506713867 }, { "t": 0.0046634674072265625, "x": -117.22916412353516, "y": 32.954132080078125 }, { "t": 0.009374618530273438, "x": -1...
train_0016
[ { "t": 0, "x": -87.66722869873047, "y": 41.8971061706543 }, { "t": 0.002361297607421875, "x": -117.23793029785156, "y": 32.8770637512207 }, { "t": 0.009618759155273438, "x": -122.39479064941406, "y": 37.7840690612793 }, { "t": 0.01047515869140625, "x": -86.916...
train_0017
[ { "t": 0, "x": -87.65445709228516, "y": 41.94142532348633 }, { "t": 0.0250244140625, "x": -87.8833999633789, "y": 42.033363342285156 }, { "t": 0.03256988525390625, "x": -105.02592468261719, "y": 39.863487243652344 }, { "t": 0.03842735290527344, "x": -122.32769...
train_0018
[ { "t": 0, "x": -96.8066635131836, "y": 32.78305435180664 }, { "t": 0.000392913818359375, "x": -117.03055572509766, "y": 32.61235046386719 }, { "t": 0.0008678436279296875, "x": -116.96701049804688, "y": 32.64750671386719 }, { "t": 0.002117156982421875, "x": -12...
train_0019
[ { "t": 0, "x": -111.94728088378906, "y": 33.42190933227539 }, { "t": 0.00091552734375, "x": -111.94728088378906, "y": 33.42190933227539 }, { "t": 0.00150299072265625, "x": -79.95439910888672, "y": 40.43944549560547 }, { "t": 0.00160980224609375, "x": -111.9472...
train_0020
[ { "t": 0, "x": -105.09542846679688, "y": 39.802001953125 }, { "t": 0.004932403564453125, "x": -87.6340560913086, "y": 41.890132904052734 }, { "t": 0.005184173583984375, "x": -122.0506591796875, "y": 37.31722640991211 }, { "t": 0.007396697998046875, "x": -87.55...
train_0021
[ { "t": 0, "x": -122.40213012695312, "y": 37.78374481201172 }, { "t": 0.01116943359375, "x": -122.39479064941406, "y": 37.7840690612793 }, { "t": 0.01454925537109375, "x": -105.24759674072266, "y": 40.013607025146484 }, { "t": 0.025848388671875, "x": -122.40154...
train_0022
[ { "t": 0, "x": -104.8722152709961, "y": 39.695281982421875 }, { "t": 0.0055084228515625, "x": -104.8722152709961, "y": 39.695281982421875 }, { "t": 0.009746551513671875, "x": -117.13006591796875, "y": 32.74839782714844 }, { "t": 0.015522003173828125, "x": -118...
train_0023
[ { "t": 0, "x": -122.45982360839844, "y": 37.7784309387207 }, { "t": 0.000904083251953125, "x": -122.39012145996094, "y": 37.77964401245117 }, { "t": 0.002361297607421875, "x": -122.41941833496094, "y": 37.77492904663086 }, { "t": 0.0037841796875, "x": -91.5331...
train_0024
[ { "t": 0, "x": -116.21556091308594, "y": 33.720577239990234 }, { "t": 0.002361297607421875, "x": -122.40213012695312, "y": 37.78374481201172 }, { "t": 0.002696990966796875, "x": -104.98248291015625, "y": 39.76214599609375 }, { "t": 0.002777099609375, "x": -122...
train_0025
[ { "t": 0, "x": -73.57476043701172, "y": 41.20812225341797 }, { "t": 0.002685546875, "x": -71.0939712524414, "y": 42.35947799682617 }, { "t": 0.003658294677734375, "x": -104.99916076660156, "y": 39.74656295776367 }, { "t": 0.004108428955078125, "x": -104.999160...
train_0026
[ { "t": 0, "x": -122.03218078613281, "y": 37.322998046875 }, { "t": 0.000484466552734375, "x": -122.18499755859375, "y": 47.74419021606445 }, { "t": 0.0006103515625, "x": -122.18499755859375, "y": 47.74419021606445 }, { "t": 0.001155853271484375, "x": -122.4021...
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Brightkite Check-ins STPP Benchmark Dataset

A benchmark-ready Spatio-Temporal Point Process (STPP) dataset derived from Brightkite Check-ins (~4.5 Million records), following the standard split semantics for Neural STPP evaluation.

Dataset Description

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

Source Format

Raw data was obtained from Stanford SNAP. 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 33,231 3,323,096 70%
val 7,121 712,094 15%
test 7,121 712,091 15%

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

File Structure

brightkite_checkins/
├── train.jsonl        # 33231 sequences
├── val.jsonl          # 7121 sequences
├── test.jsonl         # 7121 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": -122.419, "y": 37.774},
    {"t": 2.318, "x": -122.420, "y": 37.775}
  ]
}

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: Stanford SNAP URL: https://snap.stanford.edu/data/loc-brightkite_totalCheckins.txt.gz

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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