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From Eliza to XiaoIce: Challenges and Opportunities with Social Chatbots (1801.01957v2)

Published 6 Jan 2018 in cs.AI and cs.HC

Abstract: Conversational systems have come a long way since their inception in the 1960s. After decades of research and development, we've seen progress from Eliza and Parry in the 60's and 70's, to task-completion systems as in the DARPA Communicator program in the 2000s, to intelligent personal assistants such as Siri in the 2010s, to today's social chatbots like XiaoIce. Social chatbots' appeal lies not only in their ability to respond to users' diverse requests, but also in being able to establish an emotional connection with users. The latter is done by satisfying users' need for communication, affection, as well as social belonging. To further the advancement and adoption of social chatbots, their design must focus on user engagement and take both intellectual quotient (IQ) and emotional quotient (EQ) into account. Users should want to engage with a social chatbot; as such, we define the success metric for social chatbots as conversation-turns per session (CPS). Using XiaoIce as an illustrative example, we discuss key technologies in building social chatbots from core chat to visual awareness to skills. We also show how XiaoIce can dynamically recognize emotion and engage the user throughout long conversations with appropriate interpersonal responses. As we become the first generation of humans ever living with AI, we have a responsibility to design social chatbots to be both useful and empathetic, so they will become ubiquitous and help society as a whole.

From Eliza to XiaoIce: Challenges and Opportunities with Social Chatbots

The paper, authored by Heung-Yeung Shum, Xiaodong He, and Di Li from Microsoft Corporation, provides a comprehensive analysis of the evolution of conversational systems, focusing on the paradigm shift from basic chatbots to sophisticated social chatbots like Microsoft’s XiaoIce.

Conversational systems have experienced significant advancements since the 1960s. Beginning with rudimentary programs like Eliza and Parry, which relied on rule-based approaches for text-based interactions, the paper traces enhancements leading up to intelligent personal assistants (IPAs) such as Siri and ultimately to present-day social chatbots like XiaoIce.

Evolution of Chatbots

The paper highlights the transition from early chatbots that aimed to pass the Turing Test through mimicry of human conversation to IPAs designed for task completion. IPAs, including Siri and Cortana, incorporate proactive assistance based on user preferences and context, though they still operate within semi-constrained environments.

The paper particularly emphasizes social chatbots, which differ from task-focused systems by fostering emotional connections with users. The success of these systems is evaluated through Conversation-Turns per Session (CPS), a metric highlighting engagement effectiveness.

Design Principles of Social Chatbots

Social chatbots are crafted to satisfy users' needs for communication and emotional connection. The integration of intellectual quotient (IQ) and emotional quotient (EQ) is fundamental for these systems. Key capabilities include:

  • Empathy: Detecting and responding to users' emotions and sentiments.
  • Interpersonal Skills: Personalizing interactions based on user profiling and context.
  • Personality Consistency: Maintaining a steady personality to build trust and engagement.

The framework for these chatbots includes a multimodal interface capable of interpreting text, speech, and images, reflecting the need for advanced semantic understanding and response generation technologies.

Technological Framework

The architecture of a social chatbot comprises several critical components:

  • Core Chat: Responsible for semantic encoding and generating contextually relevant responses through advanced neural models such as LSTMs.
  • Visual Awareness: Enables understanding and commenting on images, using deep learning models for image-caption alignment and sentiment analysis.
  • Skills Integration: Allows the chatbots to perform diverse tasks, enhancing their utility and user satisfaction.

XiaoIce as a Case Study

XiaoIce serves as a case paper demonstrating these principles in action. With over 100 million users globally, XiaoIce boasts a high CPS, indicative of its engaging design. Its capabilities extend beyond text-based conversation to image commenting, poem writing, and even singing with human-like expressiveness.

Experimental results reveal substantial CPS improvements, underscoring XiaoIce's increasing sophistication. Additionally, user feedback indicates that interactions with XiaoIce often lead to enhanced mood and emotional well-being, highlighting its practical benefit.

Future Directions and Considerations

The paper identifies several open areas requiring breakthroughs for more advanced AI chatbot development, including empathic conversation modeling, neural-symbolic reasoning, and memory modeling.

The authors also urge adherence to ethical standards in chatbot design to prevent harm and promote positive societal impact. As social chatbots gain prevalence, the importance of ethical considerations in deployment becomes paramount.

In summary, this paper articulates the challenges and innovations in conversational systems, with a focus on social chatbots' role in providing emotionally intelligent, engaging, and practical AI companions. The evolution from Eliza to XiaoIce illustrates significant progress while highlighting the complex challenges ahead in refining AI's interaction capabilities.

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Authors (3)
  1. Heung-Yeung Shum (32 papers)
  2. Xiaodong He (162 papers)
  3. Di Li (342 papers)
Citations (511)