mirror of
https://github.com/velocitatem/PHANTOM.git
synced 2026-05-31 08:33:36 +00:00
194 lines
7.3 KiB
Python
194 lines
7.3 KiB
Python
from loader import Loader, AgentLoader, JointLoader
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from collections import defaultdict
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from typing import Dict, List, Tuple, Set
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import numpy as np
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import graphviz
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class BehaviorModel:
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def __init__(self, src_dir: str, loader_cls=Loader):
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self.loader = loader_cls(src_dir)
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self.data = self.loader.get_data()
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self.entries, self.num_entries = self.loader.get_entries()
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self.mdp = None
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def _state_repr(self, evt) -> str:
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p = evt.value.payload
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return f"{p.page or 'unk'}|{p.productId or 'none'}|{p.eventName}"
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def _sort_key(self, evt):
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return evt.timestamp
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def _extract_sessions(self) -> List[List[str]]:
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trajs = []
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for evts in self.data.values():
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if len(evts) < 2: continue
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states = [self._state_repr(e) for e in sorted(evts, key=self._sort_key)]
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trajs.append(states)
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return trajs
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def _calc_transitions(self, trajs: List[List[str]]) -> Tuple[Dict, Set]:
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trans, states = defaultdict(lambda: defaultdict(int)), set()
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for traj in trajs:
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for s, s_next in zip(traj, traj[1:]):
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trans[s][s_next] += 1
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states.update([s, s_next])
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return trans, states
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def _calc_rewards(self, trajs: List[List[str]]) -> Dict:
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rwd = defaultdict(list)
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for traj in trajs:
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n = len(traj)
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for i, s in enumerate(traj):
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rwd[s].append(i / n)
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return rwd
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def _normalize_trans(self, cnts: Dict) -> Dict:
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return {s: {s_n: cnt/sum(nxt.values()) for s_n, cnt in nxt.items()}
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for s, nxt in cnts.items()}
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def build_MDP(self) -> Dict:
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trajs = self._extract_sessions()
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trans_cnt, states = self._calc_transitions(trajs)
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trans_prob = self._normalize_trans(trans_cnt)
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state_rwd = self._calc_rewards(trajs)
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self.mdp = {
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'states': sorted(states),
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'num_states': len(states),
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'transitions': trans_prob,
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'state_values': {s: np.mean(r) for s, r in state_rwd.items()},
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'state_rewards': state_rwd,
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'trans_counts': trans_cnt,
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}
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return self.mdp
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def transition_prob(self, s: str, s_next: str) -> float:
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if not self.mdp: raise ValueError("build MDP first")
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return self.mdp['transitions'].get(s, {}).get(s_next, 0.0)
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def state_value(self, s: str) -> float:
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if not self.mdp: raise ValueError("build MDP first")
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return self.mdp['state_values'].get(s, 0.0)
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def sample_traj(self, start: str, max_len: int = 50) -> List[str]:
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if not self.mdp: raise ValueError("build MDP first")
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path, curr = [start], start
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for _ in range(max_len):
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nxt = self.mdp['transitions'].get(curr, {})
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if not nxt: break
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curr = np.random.choice(list(nxt.keys()), p=list(nxt.values()))
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path.append(curr)
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return path
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class AgentBehaviorModel(BehaviorModel):
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def __init__(self, src_dir: str):
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super().__init__(src_dir, AgentLoader)
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def _state_repr(self, evt) -> str:
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return f"{evt.page or 'unk'}|{evt.productId or 'none'}|{evt.eventName}"
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def _sort_key(self, evt):
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return evt.ts
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class JointBehaviorModel(BehaviorModel):
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def __init__(self, human_dir: str, agent_dir: str):
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self.loader = JointLoader(human_dir, agent_dir)
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self.data = self.loader.get_data()
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self.entries, self.num_entries = self.loader.get_entries()
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self.mdp = None
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def _state_repr(self, evt) -> str:
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return f"{evt.page or 'unk'}|{evt.productId or 'none'}|{evt.eventName}"
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def _sort_key(self, evt):
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return evt.ts
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def aggregate_event_transitions(mdp: Dict) -> Dict[str, Dict[str, float]]:
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evt_trans = defaultdict(lambda: defaultdict(float))
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for s, trans in mdp['transitions'].items():
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src = s.split('|')[2]
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for s_next, prob in trans.items():
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dst = s_next.split('|')[2]
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evt_trans[src][dst] += prob
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for src in evt_trans:
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total = sum(evt_trans[src].values())
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if total > 0:
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evt_trans[src] = {dst: p/total for dst, p in evt_trans[src].items()}
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return dict(evt_trans)
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def visualize_mdp(model: BehaviorModel, threshold: float = 0.05, output: str = "mdp_graph",
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fmt: str = "svg", view: bool = False, export_dot: bool = False):
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if not model.mdp: raise ValueError("build MDP first")
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evt_trans = aggregate_event_transitions(model.mdp)
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g = graphviz.Digraph(format=fmt)
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g.attr(rankdir='LR', size='30')
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g.attr('node', shape='circle', width='1', height='1')
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events = set(evt_trans.keys()) | {e for trans in evt_trans.values() for e in trans.keys()}
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for evt in events:
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g.node(evt)
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for src, dsts in evt_trans.items():
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for dst, prob in dsts.items():
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if prob > threshold:
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g.edge(src, dst, label=f'{prob:.2f}')
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g.render(output, view=view, cleanup=True)
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print(f"Saved MDP graph to {output}.{fmt}")
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if export_dot:
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with open(f"{output}.dot", 'w') as f:
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f.write(g.source)
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print(f"Exported DOT source to {output}.dot")
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return g
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def kl_divergence(p: Dict[str, float], q: Dict[str, float]) -> float:
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eps = 1e-10
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return sum((p[k] + eps) * np.log((p[k] + eps) / (q.get(k, 0.0) + eps)) for k in p)
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if __name__ == "__main__":
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base_dir = "/home/velocitatem/Documents/Projects/PHANTOM/experiments"
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human_dir, agent_dir = f"{base_dir}/collected_data/", f"{base_dir}/agents/collected_data/"
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human_model = BehaviorModel(human_dir)
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human_mdp = human_model.build_MDP()
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print(f"Built MDP: {human_mdp['num_states']} states, "
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f"{sum(len(t) for t in human_mdp['transitions'].values())} transitions")
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if not human_mdp['states']:
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exit("No states found")
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visualize_mdp(human_model, threshold=0.05, output="human_mdp_viz", fmt="pdf", export_dot=True)
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agent_model = AgentBehaviorModel(agent_dir)
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agent_mdp = agent_model.build_MDP()
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print(f"AGENT... Built MDP: {agent_mdp['num_states']} states, "
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f"{sum(len(t) for t in agent_mdp['transitions'].values())} transitions")
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if not agent_mdp['states']:
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exit("No states found")
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visualize_mdp(agent_model, threshold=0.05, output="agent_mdp_viz", fmt="pdf", export_dot=True)
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human_evt = aggregate_event_transitions(human_mdp)
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agent_evt = aggregate_event_transitions(agent_mdp)
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common = set(human_evt.keys()) & set(agent_evt.keys())
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if not common:
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exit("No common event types for KL divergence analysis")
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kl_divs = sorted([(e, kl_divergence(human_evt[e], agent_evt[e])) for e in common],
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key=lambda x: x[1], reverse=True)
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print(f"Average KL divergence: {np.mean([kl for _, kl in kl_divs]):.4f}")
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print("\nMost divergent event types:")
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for evt, kl in kl_divs:
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print(f" {evt}: {kl:.4f}")
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print("\n=== Joint Model (Human + Agent Combined) ===")
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joint_model = JointBehaviorModel(human_dir, agent_dir)
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joint_mdp = joint_model.build_MDP()
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print(f"Built joint MDP: {joint_mdp['num_states']} states, "
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f"{sum(len(t) for t in joint_mdp['transitions'].values())} transitions")
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if joint_mdp['states']:
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visualize_mdp(joint_model, threshold=0.05, output="joint_mdp_viz", fmt="pdf", export_dot=True)
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