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Proactive Conversation

License: MIT

Motivation

Human-machine conversation is one of the most important topics in artificial intelligence (AI) and has received much attention across academia and industry in recent years. Currently dialogue system is still in its infancy, which usually converses passively and utters their words more as a matter of response rather than on their own initiatives, which is different from human-human conversation. We believe that the ability of proactive conversation of machine is the breakthrough of human-like conversation.

What we do ?

  • We set up a new conversation task, named Proactive Converstion, where machine proactively leads the conversation following a given goal.
  • We also created a new conversation dataset named DuConv , and made it publicly available to facilitate the development of proactive conversation systems.
  • We established retrival-based and generation-based baseline systems for DuConv, which are available in this repo.
  • In addition, we hold competitions to encourage more researchers to work in this direction.

Paper

Task Description

Given a dialogue goal g and a set of topic-related background knowledge M = f1 ,f2 ,..., fn , the system is expected to output an utterance "ut" for the current conversation H = u1, u2, ..., ut-1, which keeps the conversation coherent and informative under the guidance of the given goal. During the dialogue, the system is required to proactively lead the conversation from one topic to another. The dialog goal g is given like this: "Start->Topic_A->TOPIC_B", which means the machine should lead the conversation from any start state to topic A and then to topic B. The given background knowledge includes knowledge related to topic A and topic B, and the relations between these two topics.
image Figure1.Proactive Conversation Case. Each utterance of "BOT" could be predicted by system, e.g., utterances with black words represent history H,and utterance with green words represent the response ut predicted by system.

DuConv

We collected around 30k conversations containing 270k utterances named DuConv. Each conversation was created by two random selected crowdsourced workers. One worker was provided with dialogue goal and the associated knowledge to play the role of leader who proactively leads the conversation by sequentially change the discussion topics following the given goal, meanwhile keeping the conversation as natural and engaging as possible. Another worker was provided with nothing but conversation history and only has to respond to the leader.
  We devide the collected conversations into training, development, test1 and test2 splits. The test1 part with reference response is used for local testing such as the automatic evaluation of our paper. The test2 part without reference response is used for online testing such as the competition we had held and the Leader Board which is opened forever in https://ai.baidu.com/broad/leaderboard?dataset=duconv. The dataset is available at https://ai.baidu.com/broad/subordinate?dataset=duconv.

Baseline Performance

We provide retrieval-based and generation-based baseline systems. Both systems were implemented by PaddlePaddle (the Baidu deeplearning framework). The performance of the two systems is as follows:

baseline system F1/BLEU1/BLEU2 DISTINCT1/DISTINCT2
retrieval-based 31.72/0.291/0.156 0.118/0.373
generation-based 32.65/0.300/0.168 0.062/0.128

Competitions

Rank F1/BLEU1/BLEU2 DISTINCT1/DISTINCT2
1 49.22/0.449/0.318 0.118/0.299
2 47.76/0.430/0.296 0.110/0.275
3 46.40/0.422/0.289 0.118/0.303